key: cord-1012112-oiol8xzv authors: Chen, Jingzhe; Wang, Hongfeng; Zhong, Ray Y. title: A Supply Chain Disruption Recovery Strategy Considering Product Change under COVID-19 date: 2021-04-23 journal: J Manuf Syst DOI: 10.1016/j.jmsy.2021.04.004 sha: dadfcf1488744643f98fbf0309c4966f8b11050a doc_id: 1012112 cord_uid: oiol8xzv A recent global outbreak of Corona Virus Disease 2019 (COVID-19) has led to massive supply chain disruption, resulting in difficulties for manufacturers on recovering their supply chains in a short term. This paper presents a supply chain disruption recovery strategy with the motivation of changing the original product type to cope with that. In order to maximize the total profit from product changes, a mixed integer linear programming (MILP) model is developed with combining emergency procurement on the supply side and product changes by the manufacturer as well as backorder price compensation on the demand side. The model uses a heuristic algorithm based on ILOG CPLEX toolbox. Experimental results show that the proposed disruption recovery strategy can effectively reduce the profit loss of manufacturer due to late delivery and order cancellation. It is observed that the impact of supply chain disruptions is reduced. The proposed model can offer a potentially useful tool to help the manufacturers decide on the optimal recovery strategy whenever the supply chain system experiences a sudden massive disruption. Supply chain refers to the entire process of making and selling commercial goods, including every stage from the supply of materials and the manufacture of the goods through to their distribution and sale [1, 2] . Over the past few decades, large-scale disruptions of supply chain have been caused by natural and man-made disasters, such as 2004 Indian Ocean earthquake, 2008 U.S. subprime mortgage crisis, 2011 Japan tsunami and so on [3] . With specialization and concentration in manufacturing industry, disruptions at one or a few entities can affect almost all ones in supply chain [4] . Once such disruptions occur, the whole supply chain has to face a lot of problems, such as supply disruption [5] , production disturbance [6] or demand change [7] . Therefore, it is very important to design resilient supply chains so as to cope with different disruptive events effectively [8, 9] . Supply chain resilience management usually starts with risk prediction or risk identification, that is, to predict possible risks and to develop different strategies for identifiable risks [10] . This approach can effectively deal with those disruptions that have occurred before and can be expected. For unexpected disruptions that are difficult to predict, an important issue for building resilience of supply chain is to develop the effective recovery strategies so that the system can respond and recover quickly from the disruptions [11, 12] . In the case of the Volkswagen Group, for example, the COVID-19 pandemic that outbreak from December 2019 has affected the supply of chips related to ESP (Electronic Stability Program System) and ECU (Electronic Control Unit). During COVID-19 pandemic, many chip suppliers have been reducing their production J o u r n a l P r e -p r o o f capacity or shutting down their factories, which would lead to the disruption risk of supply chain in the production of some Volkswagen vehicles. According to statistics, 938 of Fortune's 1,000 largest companies suffered the serious influences of raw material supply and production due to the disruptions in global supply chains caused by this epidemic outbreak 1 . Queiroz et al. [13] systematically analyzed the impact of the COVID-19 pandemic upon supply chain through a structured literature review. The large-scale disruptions of supply chain system could result in such high economic losses due to the following three distinctive characteristics: 1) the unpredictability of the disruption over time and its magnitude; 2) the simultaneous spread of the disruption through both the system (i.e., ripple effect) and the population (i.e., pandemic spread); 3) the partial or total simultaneous disruption of supply, production, demand, and logistics infrastructure [14, 15] . Compared with previous epidemics (e.g., SARS, H1N1), COVID-19 would last longer and spread more widely, which causes more severe disruptions and increase the recovery difficulty for supply chain greatly [16, 17] . Ivanov et al. [18] categorized the schemes of dealing with the disruption risk of supply chain as proactive and reactive. The former emphasized identifying and anticipating the existing vulnerabilities and the potential disruptions of supply chain [19] [20] [21] , while the latter focused on developing the recovery strategies for different disruptions [22] [23] [24] . However, the existing proactive or reactive strategies cannot cope with the prolonged disruption caused by COVID-19 effectively. For one thing, the disruption degree of supply chain could hardly be identified in the proactive context. For other, the supply capacity could not be recovered quickly in the context of reactive strategies due to such sudden outbreak cause a large-scale disruption of the original or alternate suppliers for a longer period. Therefore, a new recovery strategy will be developed with consideration of product change [25, 26] to mitigate the disruption impact of supply chain under the COVID-19 pandemic in this paper. A mixed integer programming model with minimizing the total cost of recovering from the disruption of supply chain will be developed. From the numerical results, we will identify how the 1 https://fortune.com/2020/02/21/fortune-1000-coronavirus-china-supply-chain-impact/ J o u r n a l P r e -p r o o f cost factors, that is, product change duration, new supplier selection and allocation, and customer sensitivity, play the different roles in the product change scheme. The remainder of the paper is organized as follows. Section 2 provides an overview on relevant literature. The problem definition, the symbolic representation and the underlying assumptions are given in Section 3. Section 4 presents the mathematical model and its solution method. Numerical experiments and the discussion of results are given in Section 5. Section 6 gives management insights and the final section summarizes this paper and provides a perspective for future work. Disruptions can occur in any part of supply chain, including the upstream supply side, the intermediate manufacture processes, and the downstream demand side. As an interdependent and interconnected whole, local disruption can propagate through supply chain and wreak havoc on the entire supply chain [27] . Ivanov et al. [28] referred to this phenomenon as a ripple effect. Unlike the bullwhip effect triggered by small demand vulnerability [29] , the disruption in the ripple effect could either originate at the supply side and propagate positively along the logistics direction, or originate at the demand side and propagate negatively upstream, which would affect more enterprises in the supply chain [30] . Li et al. [31] distinguished the forward and backward propagation of disruptions and gave a detailed analysis on the factors affecting the propagation of disruptions. Zhang et al. [32] explored the propagation of disruption risk in the automotive supply chain by surveying 31 Chinese automotive-related firms. In the work of Ivanov et al. [18] , two major categories of strategies, that is, proactive and reactive, were used to deal with the disruption risk of supply chain. Proactive strategies are referred to those that are in action before a disruption occurs. Knemeyer et al. [33] developed a process for proactive planning of catastrophic risk events by integrating the different strategy streams of risk management. In order to reduce the generated disruption costs by purchasing raw materials in advance, Pal et al. [34] proposed a three-level supply chain model based on an economic production quantity inventory model, which was termed as EPQ in [35] . Torabi et al. [36] presented a bi-J o u r n a l P r e -p r o o f objective hybrid two-stage stochastic planning model to reduce the impact of supplyside disruptions with consideration of using alternate suppliers or developing a supplier continuity plan. Islam et al. [21] presented an inventory model considering random inventory, reliability of suppliers, and delivery capacity to optimize the inventory plans of manufacturers. Although system resilience can be enhanced by building redundancy or flexibility, such built-in resilience increases costs, and these proactive mitigation strategies may not be appropriate for dealing with unexpected supply chain disruptions [37] . The reactive strategies are more effective to enable supply chain to quickly return to the normal state after a disruption happens to the system [38] . Xia et al. [39] developed a two-stage generic production and inventory disruption recovery model, which take into account the cost of deviation from the normal schedule after recovery, and introduced the concept of disruption recovery time window. Hishamuddin et al. [40] extended the model of Xia et al. [39] and proposed an economic batch model based on disruption recovery method by determining the optimal manufacturing batch size and the optimal recovery duration for a production run in the recovery time window to minimize the expected total cost of ownership. Paul et al. [41] proposed the concepts of backorders and lost sales respectively to develop a two-stage supplier-manufacturer supply chain recovery model under disruption risk. Kaur et al. [42] presented an independent production and procurement integration model, where both the changes of market demand and the uncertainty of manufacturers, suppliers, and transporters were considered. Malik et al. [43] developed a disruption recovery model for a multi-product, single-stage manufacture system in order to obtain the optimal procurement lot size for multiple materials under the budget and storage space constraints in the given recovery time window. Ivanov et al. [44] observed that disruptions in production capacity create a risk of product shortages, and developed a coordinated contingency policy for production order in the supply chain during and after disruptions. Gupta et al. [45] developed an analytical game-theoretic model to cope with supply disruptions by considering optimal pricing strategies and sourcing levels. The existing studies have made significant contributions in developing recovery J o u r n a l P r e -p r o o f strategies after disruptions occur in supply chain system. However, these strategies do not consider the occurrence of disruptions in special circumstances, such as the supply chain disruptions caused by the global COVID-19 outbreak, which is characterized by longer duration and wider spread than the previous epidemics or abnormal events that have occurred. Due to the large-scale impact of global supply chain during the COVID-19 pandemic, the manufacture enterprises have begun to consider utilizing the current production devices or purchasing the special devices certified by testing agencies to produce the high-demand products (masks, hand sanitizers, disinfectants and etc.) or the emergency personal protective equipment (PPE) [46, 47] . In this paper, we investigate this special situation in that some or all of the original suppliers are unable to recover in the short term after a supply disruption during a pandemic, and develop a disruption recovery strategy with consideration of changing product design, in order to decrease the economic loss due to the special disruption of supply chain as possible. In this section, the definition of the problem is presented firstly, which shows the main motivation of this research. After that, the notation and basic assumptions of the mathematical model are given. In order to stop the spread of the COVID-19 pandemic, many countries adopt a lot of embargo policies that cause a large-scale reduction in the supply of raw material in the global range. As a result, many manufacture enterprises are unable to obtain sufficient raw materials and then fall into the production standstill. In this paper, we consider a three-stage supply chain consisting of multiple suppliers of the same raw material, a manufacturing firm producing one product, and multiple retailers, as shown in Fig. 1 . Suppliers in some areas affected by the outbreak may not be able to recover in the short term after a supply disruption. In addition, some suppliers may experience short-term supply disruptions or reduced supply capacity due to national embargo policies and a shrinking transportation industry. When a supply disruption occurs, if no action is taken, the company's capacity will drop, and out-of-J o u r n a l P r e -p r o o f stocks will occur for customer orders arriving at any given time. In this case, the customer may choose to backorder or abandon the order depending on the delivery time and will incur backorder costs or lost sales. ... ... In order to reduce the loss of the manufacture enterprise and alleviate the disruption of supply from some or all of the original suppliers, we consider two ways at the same time in the disruption recovery strategy: one is to make an emergency purchase from the undisrupted supplier, that is, to increase the purchase quantities to keep producing the original product; the other is to change the product composition, that is, to adjust the raw materials required for the changed product, replace the original raw materials with new ones, and then select a new supplier to replace the supplier without changing the main design of product and still using the current production equipment. When the first approach is taken, the cost of emergency procurement and the quantity of raw materials that can be obtained by emergency procurement need to be considered in the model; when the second approach is taken, the cost of product change, including the procurement cost of alternative suppliers and the cost of lost sales after the product change compared with the original product, requires to be considered. Finally, an integrated decision on product change and supplier selection is conducted to establish a disruption recovery model. Therefore, manufacturer need consider the following three important questions during the production cycle after a supply chain disruption occurs: (1) How much raw material to obtain through emergency procurement? (2) How many products to make J o u r n a l P r e -p r o o f changes and how to choose alternative suppliers? (3) How to meet the demand of different customer orders to minimize losses in case of supply-demand imbalance? In order to make the study more relevant and feasible, the following basic assumptions are made. (1) Each supplier may face two types of disruptions, that is, long-term disruptions due to the prolonged duration of the outbreak and short-term disruptions due to the embargo policy. The occurrence of disruptions at each supplier is independent each other and only related to the presence of an outbreak in that area. (2) After the outbreak, large-scale supply disruptions occur at time 0, where the longterm disruptions are not recoverable throughout the production horizon and the shortterm supply disruptions due to the embargo policy can be recovered in cycle after the outbreak is controlled, but cause the capacity reducing. (3) The manufacturer needs one necessary raw material to produce its product, and may choose alternative raw materials for production by changing the product design. However, there is a price difference between the changed product and the original one, which incurs a loss in cost of sales. (4) After supply disruptions occur, taking emergency procurement requires to consider additional procurement costs, but production delay due to emergency procurement does not be taken into count, while taking product design changes requires consideration of product change costs and product change time. (5) For all retailers, the quantity of product required for an order is determined prior to disruption and does not change during the production horizon. Retailer's order will be produced in one period and shipped immediately after production. Products in period are delivered in period + 1 regardless of product transit storage. In order to understand the model developed in this paper, we will give the meaning of the symbols used in the model as follows. Quantity to be procured in ℎ period for ℎ disruption type from ℎ supplier Quantity to be procured in ℎ period for ℎ disruption type from ℎ alternative supplier after product change The quantity of raw materials inventory in ℎ period for ℎ disruption type 1 if ℎ retailer's order is produced for ℎ disruption type in ℎ period, else 0 Quantity to be procured in ℎ period for normal production conditions from ℎ supplier 1 if ℎ supplier for ℎ disruption type has not been disrupted, else 0 1 if ℎ supplier for ℎ disruption type has been disrupted due to blocking policy, else 0 Cost of ordering from ℎ supplier Unit procurement cost of raw materials from ℎ supplier Emergency unit procurement cost of raw materials from ℎ supplier Unit procurement cost of alternative raw materials from ℎ alternative supplier Maximum quantity of raw material that can be supplied by ℎ J o u r n a l P r e -p r o o f supplier in ℎ period Maximum quantity of alternative raw material that can be supplied by ℎ alternative supplier in ℎ period Loss of production capacity coefficient of ℎ supplier Resilience coefficient of ℎ supplier Unit holding inventory cost of raw materials Unit revenue of production Maximum quantity to be produced in ℎ period Unit cost of production Quantity of order demand from ℎ retailer Last lead time for ℎ retailer's order Last period for ℎ retailer to cancel the order Unit cost of backorder for ℎ retailer's order after delayed delivery Unit cost of lost sales for ℎ retailer's order after order cancellation Unit cost of lost sales after product change In this section, we propose a recovery strategy in this paper to model supplier disruption recovery targeted at minimizing the manufacturer's total cost in the event of supply disruption. We present in detail the various cost functions in recovering supply chain disruption subject to the various constraints that need to be satisfied. In addition, only the costs in the recovery window are considered due to the limited time horizon for our particular model. The supply chain disruption in the proposed model is divided into two categories, including long-term disruptions that are not recoverable in the time horizon, and shortterm disruptions that are able to recover a limited capacity after production cycles. The set of undisrupted suppliers is , the set of long-term disrupted suppliers is , and the set of short-term disrupted suppliers is . The manufacturer's revenue is calculated as selling price per unit multiplied by the retailers' demand quantity and orders delivery status. All the costs involved in the total cost of the production system TC per item are J o u r n a l P r e -p r o o f derived as follows: FOC is the cost of raw materials ordered by the manufacturer from suppliers in advance of the production schedule, independent of the number of orders and the quantity ordered, which can be expressed as the sum of the ordering costs from different suppliers. A manufacturer's raw material inventory includes a certain amount of safety stock held before a supply disruption occurs, which will be consumed after the disruption, and production to order, which may result in a backlog of raw materials. RIC can be calculated as the unit inventory cost of raw materials multiplied by the quantity of raw material inventory per production cycle, which can be denoted as follows: Considering that each product takes up a certain amount of resources when it is produced, PC is defined as the cost per unit of production for each product multiplied by the total quantity of that product produced. In case of disruptions due to the pandemic, the cost of raw materials purchased by the manufacturer from the original supplier will contain the three potential sub costs, i.e. normal procurement costs from those suppliers who did not experience the disruption, emergency procurement costs for additional quantities ordered after the disruption, and procurement costs for suppliers who experience short-term disruptions and are able to restore supply after production cycles. Then, OPC can be calculated by multipling the unit procurement cost of the raw materials by the purchase quantity. Manufacturers consider design changes to some products after a supply disruption occurs, and seek new suppliers to replace original disrupted suppliers to produce new products after the product change. Product design changes require consideration of product change time and change costs. PCC includes the cost of procuring from the alternative supplier and the cost of lost sales resulting from price differences between changed products and original products, which can be expressed as follows: The impact of supply disruptions will propagate positively through the supply chain, ultimately causing demand-side orders not to be delivered on schedule. The backorder is an order that is not met at the time of the agreed delivery period, but can be deferred after the quantity of product produced meets the requirements. Delayed delivery requires price compensation to the customer and will incur backorder cost. BC can be calculated as the backorder cost per unit multiplied by the backordered number of units. When the order backorder delivery time exceeds the customer's latest waiting time, the customer will cancel the order, which will result in lost sales costs. LSC is the unit lost sales cost multiplied by the lost sales units, which can be denoted as follows: The total cost of a manufacturing company's supply chain is the sum of the seven In summary, we propose a mixed integer linear programming (MILP) model as follow: Max Rev − TC (10) ≥ , ∀ ∈ , ∈ , ∈ ≤ , ∀ ∈ , ∈ , ∈ ∑ ∑ ∈ ′ ∈ : ′ ≤ ≤ ∑ (∑ ∈ + ∑ ∈ + ∑ ∈ ) ′ ∈ : ′ ≤ −1 (20) ∈ {0,1} , ∀ ∈ , ∈ , ∈ , , are positive integers , ∀ ∈ , ∈ ,k ∈ , ∈ , ∈ Eq. (10) defines the objective function to maximize the manufacturer's total profit, along with Eqs. (1) and (9) . Eqs. (11) and (12) constrain the maximum procurement quantity within the production schedule, both before and after the disruption, to not exceed the manufacturer's production capacity. Eq. (13) balances the manufacturer's procurement, product change procurement, actual production, and raw material inventories with the order requirements for each cycle after the disruption occurs. Eqs. In the existing literature, various optimization tools have been widely used to solve small and medium-sized problems. Considering that the model developed in this paper is a mixed-integer linear programming (MILP) model, we propose a heuristic algorithm for solving the model. we will use IBM ILOG CPLEX 12.10.0 and matlab2018b Optimization Toolbox as the solution approach. With its integrated development environment, descriptive modeling language, and built-in tools, ILOG CPLEX can solve mixed-integer linear programming problems quickly and reliably. In the solving process, we firstly solve for the raw material procurement and production under normal production conditions with the goal of maximizing the manufacturer's total profit; and then we classify the types of disruptions faced by suppliers; and later on, we solve to minimize the manufacturer's total cost without any recovery strategy after a supply disruption occurs; and finally we solve the model developed by the combined recovery strategy proposed in this paper. The main steps of the proposed solution algorithm are presented as follows: Step 1: Input all parameters on the production system and get ; Step 2: Classify the disruption types of suppliers and assign values to , according to the classification results; Step 3: Set = 1 for the first disruption type and input disruption scenario; Step 4: Put = 1,2,3 … for disruption for all suppliers; Step 5: Solve the mathematical model under the updated disruption scenario; Step 6: Update the values of and as the revised procurement lot size from Step 5 and record the revised production plan; Step 7: Output the final results. on the results. It is assumed that 6 suppliers provide raw materials before the disruption occurs that the products produced by the manufacturer will be supplied to each of the 8 customers, and that the production horizon for the recovery period after the disruption consists of 10 time periods. There are 3 alternative suppliers to choose from after a product design change, and the product design change time is 2 . The supply side may face long-term disruptions due to large-scale spread of the epidemic or short-term disruptions due to the embargo policy. It is assumed a random value between 2 and 4 for the recovery time after a short-term disruption. To demonstrate the proposed model, two supply disruption types that a manufacturer may face are discussed, including long-term disruption that cannot be recovered within a production recovery plan, and both long-term disruption and short-term disruption that are considered simultaneously. Therefore, it is assumed that suppliers 1,3,4, and 5 have The supplier parameter information is shown in Table 1 , which describes the values of maximum supply quantity , loss of production capacity coefficient , resilience coefficient of supply capacity , fixed order cost , unit procurement cost , and J o u r n a l P r e -p r o o f emergency procurement cost . Parameters related to product changes are shown in Table 2 , which describes the values of maximum supply quantity , unit procurement cost , and the cost of lost sales . In addition, product change time = 2 . The retailer's parameter information is shown in Table 3 , which describes the order quantity , the latest delivery cycle for the retailer's order, the latest cycle for the retailer's order cancellation, the unit backorder cost , and the cost of lost sales , where 3 represents the third time period of the production schedule. Product design change parameters Supplier A1 400 10 5 A2 450 9 5 A3 500 11 5 We give the values of the other parameters in the model, including the manufacturer's production capacity = 3000, the manufacturing unit cost = 6, the raw material inventory cost = 2, and the product revenue per unit = 30. Retailer parameters J o u r n a l P r e -p r o o f Under normal production conditions, the raw material procurement from the original supplier is calculated to maximize the manufacturer's total profit, and the results are shown in Table 4 . Manufacturer's procurement of raw materials and maximum total profit In the case of different types of disruptions to suppliers, when the manufacturer does not adopt any recovery strategy, the raw material procurement from the original suppliers is calculated to maximize the manufacturer's total profit, and the results of illustration 1 and illustration 2 are shown in Table 5 . In case of supply disruptions, an emergency procurement strategy will be implemented immediately, and the corresponding results are shown in Table 6 . Manufacturer's maximum profit without any measures Table 6 Manufacturer's maximum profit after emergency procurement It can be seen that when suppliers have supply disruptions, the manufacturer's total profit will decrease as the number of disrupted suppliers increases, and the manufacturer will suffer a significant loss if it does not take timely recovery measures. As can be seen from Table 5 , without any recovery strategy, the supply disruptions in illustration 1 and 2 will result in losses to the manufacturer of 447930 and 382264 respectively. As can be seen from Table 5 , when only an emergency sourcing strategy is adopted, it will result in losses to the manufacturer of 248132 and 191880 respectively. When adopting the product design change and emergency procurement combination recovery strategy proposed in this paper, raw material procurement from original suppliers with emergency procuring strategy and the manufacturer's maximum profit are shown in Table 7 , and the manufacturer's procurement at alternative suppliers after product change time 2 for each time period are shown in Table 8 . Manufacturer's maximum profit after combination recovery strategy Table 8 Manufacturer's procurement of alternative suppliers after product change can be seen that a combination of emergency procuring and product design change to add alternative suppliers can effectively reduce the manufacturer's losses. Manufacturer's total cost after disruptions vary with different parameters. In this section, we will analyze the change in manufacturer's total cost by performing a sensitivity analysis on , , and for the cases of illustration 2. For characterizing the impact, the sensitivity analysis is performed different parameters, and only one parameter is changed for each analysis, and the remainder is kept the same as in Section 5.1. We will change the parameters to -50%, -25%, +25%, and +50% of the original values to solve for the results, and details are given in Table 9 . As can be seen in Table 9 , the manufacturer's total profit after adopting the recovery strategy is more sensitive to the loss of sales resulting from the product change and can quickly change the resultant values with small changes in the parameter values. because of compromises in the production quantities. However, the manufacturer's profit will increase significantly when the compensation price for backorders is low. The increment in lost sales cost causes a linear decrease in overall profit for the production system. In this paper, we consider a three-tier supply chain system in that demand is deterministic but sensitive to both price and delivery time. When its supply chain is disrupted by the COVID-19 pandemic, the manufacturer's optimal disruption recovery strategy is analyzed by combining emergency procurement on the supply side and (2) Cost and time factors play different roles in designing an optimal disruption recovery strategy. The cost factor takes into account the additional procurement costs arising from emergency purchases, the change costs arising from product changes and their resulting lost sales, and the compensation costs to customers for backorder. How to determine raw material purchases, order production allocations and compensation levels for the recovery period essentially depends on time factors such as customer sensitivity to wait times and the duration of disruptions. (3) When the supply interruption may exist for a long time, the manufacturer can take into account factors such as out-of-stock situation, product design change time, alternative supplier procurement cost and supply capacity, etc., to make certain degree of design changes to the products produced, in order to achieve the purpose of rapid resumption of production, reduce the disruption loss and reduce the impact on corporate reputation. (4) For short-term disruptions, the optimal disruption recovery strategy mainly consists of emergency procurement. For long-term disruptions, a combined strategy consisting of both emergency procurement and product change is optimal for certain time periods of the production horizon. (5) The sensitivity analysis reveals that the time of product design changes and the sales loss incurred after product changes are more likely to pose an impact upon the manufacturer's total cost. Therefore, managers should consider how to reduce time J o u r n a l P r e -p r o o f cost and sales loss in actual system. In this paper, we develop a disruption recovery strategy for manufacturing companies in order to cope with the large-scale disruptions caused by the COVID-19 pandemic. When some or all of suppliers cannot recover quickly in a short period, the manufacturer would consider to change the product type partly and select the new suppliers that provide the raw material for the changed product in order to decrease the profit loss caused by this special disruption of supply chain. A MILP model is presented with combining emergency procurement on the supply side and product changes by the manufacturer as well as backorder price compensation on the demand side. Numerical experiments show that although changing product could incur additional procurement cost and sales profit loss, it can effectively decrease the impact of large-scale supply chain disruptions. In addition, several managerial insights are also provided for decision-makers to address the real-world disruption problems of supply chain. Despite all these efforts, this study still has a few limitations. For instance, the influence of demand fluctuation and the transshipment cost have not been taken into count, which may often occur during the outbreak in fact. In addition, other factors exist in practice, such as multiple types of products, procurement costs of different raw materials, and so on. Thus, future studies may incorporate these factors into the present disruption recovery model. The authors declared that they have no conflicts of interest to this work. We declare that we do not have any commercial or associative interest that represents a conflict of interest in connection with the work submitted. Association between supply chain glitches and operating performance Optimal distribution (re)planning in a centralized multistage supply network under conditions of the ripple effect and structure dynamics Integrated detection of disruption scenarios, the ripple effect dispersal and recovery paths in supply chains Guilt by association: strategic failure prevention and recovery capacity investments Supply-side inoperability inputoutput model (SIIM) for risk analysis in manufacturing systems Big data analytics based fault prediction for shop floor scheduling Coordination in supply chains with uncertain demand and disruption risks: Existence, analysis, and insights A general framework for assessing system resilience using Bayesian networks: a case study of sulfuric acid manufacturer Flexible business strategies to enhance resilience in manufacturing supply chains: An empirical study The severity of supply chain disruptions: Design characteristics and mitigation capabilities Supply Chain Resilience: Conceptualization and Scale Development Using Dynamic Capability Theory Antecedents of resilient supply chains: An empirical study Impacts of epidemic outbreaks on supply chains: mapping a research agenda amid the COVID-19 pandemic through a structured literature review Predicting the impacts of epidemic outbreaks on global supply chains: A simulation-based analysis on the coronavirus outbreak (covid-19/sars-cov-2) case OR-methods for coping with the ripple effect in supply chains COVID-19 pandemic: Managerial insights and research implications The economic impact of the Coronavirus 2019(Covid-2019): implications for the mining industry Exploring supply chain network resilience in the presence of the ripple effect Literature review on disruption recovery in the supply chain Review of supplier diversification and pricing strategies under random supply and demand An in-depth analysis of contingent sourcing strategy for handling supply disruptions An inventory model for a threestage supply chain with random capacities considering disruptions and supplier reliability Scheduling of recovery actions in the supply chain with resilience analysis considerations Viable supply chain model: integrating agility, resilience and sustainability perspectives-lessons from and thinking beyond the COVID-19 pandemic Minimizing the ripple effect caused by operational risks in a make-to-order supply chain Change and customisation in complex engineering domains Resource constrained scheduling of design changes based on simulation of change propagation process in the complex engineering design Ripple effect in the supply chain: An analysis and recent literature The ripple effect in supply chains: trade-off 'efficiency-flexibility-resilience' in disruption management Information distortion in a supply chain: the bullwhip effect Simultaneous structural-operational control of supply chain dynamics and resilience Ripple effect in the supply chain network: Forward and backward disruption propagation, network health and firm vulnerability Transmission of a supplier's disruption risk along the supply chain: a further investigation of the Chinese automotive industry Proactive planning for catastrophic events in supply chains A multi-echelon production-inventory system with supply disruption A mathematical model on EPQ for stochastic demand in an imperfect production system Resilient supplier selection and order allocation under operational and disruption risks A mathematical modelling approach for managing sudden disturbances in a three-tier manufacturing supply chain On the value of mitigation and contingency strategies for managing supply chain disruption risks Real-time disruption management in a two-stage production and inventory system A disruption recovery model for a single stage production-inventory system Managing risk and disruption in productioninventory and supply chain systems: a review Sustainable stochastic production and procurement problem for resilient supply chain Disruption management in a constrained multi-product imperfect production system Coordination of production and ordering policies under capacity disruption and product write-off risk: an analytical study with realdata based simulations of a fast-moving consumer goods company Competitive pricing of substitute products under supply disruption A production recovery plan in manufacturing supply chains for a high-demand item during COVID-19 Case study into the successful emergency production and certification of a filtering facepiece respirator for Belgian hospitals during the COVID-19 pandemic