3.1. Problem Description
In this study, a three-echelon supply chain network comprising multiple suppliers, manufacturers, and customers was considered, as shown in
Figure 1.
Manufacturers are owned by the enterprise, and they need various raw materials for production. The manager needs to select external candidate suppliers (the suppliers below are the candidate suppliers) to provide them with raw materials to produce products that will then be delivered to the customers. Owing to the influence of uncertain factors, suppliers have different degrees of disruption risks. To cope with the impact of disruptions, all raw materials that manufacturers require can be provided through a selection of suppliers at different levels; in the event of an outage by the supplier at the previous level, the supplier at the next level will provide their service. To ensure that customer demands are met even if all suppliers are disrupted, to prevent the entire supply chain from collapsing, this study built on the concepts of Zhang et al. [
48] and Yan and Ji [
14], who assumed that a temporary emergency supplier would be fully resilient to sudden disruptions due to its own measures (e.g., facility reinforcement); therefore, there was no risk of disruption.
In addition, the belief degree of the supplier’s disruption and fixed cost can vary depending on factors, such as geographic location and operating conditions. Furthermore, the unit cost and carbon emissions of each raw material that the manufacturer obtains from the supplier and the product that the customer obtains from the manufacturer also vary, depending on the chosen route and the production status of the enterprise. The consideration of cost and carbon emissions in this research includes all aspects of production, manufacturing, and transportation. For example, the unit cost or carbon emission of the product obtained by the customer from the manufacturer includes the cost or carbon emission of the product produced by the manufacturer and the transportation cost or carbon emission from the manufacturer to the customer. In addition, this study assumed that production is demand-driven (i.e., demand information is obtained through customers’ orders in advance).
Thus, to optimize the economic and low-carbon performance of the supply chain network, this model considered the two objectives of total cost and carbon emissions of the supply chain, and selected suppliers based on uncertainty disruptions. The level at which the selected suppliers provided raw materials to the manufacturers was determined, and the service manufacturers provided was optimized to meet customer demands.
3.2. Methodology
We considered a supply chain network composed of suppliers, manufacturers, and customers, where , , and , respectively. The fixed cost of supplier is , and the unit cost and carbon emission of obtaining each raw material from supplier by manufacturer are and , respectively. Each raw material required by each manufacturer was supplied by suppliers at most levels. For example, means that the possible supply levels are 1, 2, and 3. That is, the maximum possible supply level for a supply chain network with is 3; if a temporary emergency supplier is assigned before , its supply level may also be 1 or 2. To quantify loss due to supplier disruption, a temporary emergency supplier with an index of 0 was introduced. This temporary emergency supplier was not a long-term partner, and certain measures, such as facility enhancement, can lead to extra expenses and generate carbon emissions; therefore, the unit cost and carbon emission of raw materials obtained by manufacturers from temporary emergency suppliers are typically much greater than materials obtained from long-term suppliers. The belief degree of the supplier’s uncertain disruption was provided based on expert estimation, denoted as , and the supplier’s disruptive events were independent. Hence, the uncertain disruption belief degree of supplier that supplies raw material to manufacturer can be denoted as . The belief degree of the temporary emergency supplier’s disruption was set as 0. For customer , whose demand is , the unit cost and carbon emission for customer to obtain the product from manufacturer are and , respectively.
Three categories of decision variables were associated with supply chain network optimization, that is, supplier selection variables , assignment variables of suppliers to manufacturers , and manufacturers to customers , where means that for raw material , supplier is assigned to manufacturer at level . This represents the supplier to which the manufacturer is assigned when all the suppliers assigned at level that provide raw material are disrupted. Unless the manufacturer is assigned to a temporary emergency supplier prior to the level , each manufacturer will have exactly levels of assignment for each raw material. For raw material , if a manufacturer is assigned to candidate suppliers at levels , then that manufacturer must be assigned to a temporary emergency supplier at level , ensuring that the manufacturer’s needs are met in the event that all the suppliers assigned to the prior levels are disrupted.
Additionally, the uncertain variable was inducted to indicate the belief degree that for raw material , suppliers assigned to manufacturer at levels are disrupted and the one assigned at level is normal. For this model, the indices, parameters, uncertain variables, and decision variables are shown below.
3.2.1. Notations
: set of suppliers, ;
: set of manufacturers, ;
: set of customers, ;
: set of raw materials, ;
: set of level, .
: demand from customer ;
: fixed cost of supplier ;
: unit cost of manufacturer obtaining raw material from supplier ;
: unit cost of customer obtaining the product from manufacturer ;
: uncertain disruption belief degree of supplier that supplies raw material to manufacturer ;
: unit carbon emission of manufacturer obtaining raw material from supplier ;
: unit carbon emission of customer obtaining the product from manufacturer ;
: quantity of raw material required by manufacturer to produce unit product;
: supply chain total carbon emission cap;
: supply chain total cost cap.
: for the raw material , belief degree that suppliers assigned to manufacturer at levels are disruptive and the one assigned at level is normal.
;
;
.
3.2.2. Model Formulation
The first objective of this study was to minimize the expected total cost of the supply chain network,
:
where the first term deals with the fixed cost of selected suppliers; the expected cost of manufacturers obtaining various raw materials from the suppliers is indicated in the second term, and the cost of customers obtaining the products from the manufacturers is represented in the third term.
The second objective was to minimize the expected total carbon emissions of the supply chain network,
:
where the first term represents the expected carbon emissions of manufacturers obtaining all raw materials from the suppliers, and the second term deals with the carbon emissions of customers obtaining the products from the manufacturers.
Constraint (1c) ensures that for each raw material, an unselected supplier cannot be assigned to the manufacturer:
Constraint (1d) applies the restriction that, for each raw material, the manufacturer must have a candidate supplier for service at each level, unless a temporary emergency supplier is assigned at that level or before:
Constraint (1e) specifies that, for each raw material, each manufacturer has to be assigned to a temporary emergency supplier at a certain level. Specifically, a temporary emergency supplier can ensure that all demands can be met when all assigned suppliers are disrupted:
To ensure that customer demands are met, constraint (1f) states that each customer must be assigned to a manufacturer:
For each raw material, the belief degree that manufacturer
is served normally when allocated to supplier
at the first level can be calculated using constraint (1g):
It is important to note that
is due to
for
; thus, for raw material
, the disruption belief degree of the supplier to which manufacturer
is assigned at level
can be expressed as
. The uncertainty theory has been considerably developed in terms of its theory and application since it was proposed; specific applications of the uncertainty theory can be found in the literature [
49]. According to the uncertainty theory [
15], and the literature on the application of the uncertainty theory [
14], constraint (1h) calculates, for raw material
, the belief degree that manufacturer
can be served normally when supplier
is assigned to it for
(i.e., supplier
is normal, while suppliers assigned at prior levels are disrupted), in which
is an operator of the uncertainty theory and denotes the take-small operation:
Constraint (1i) guarantees that the decision variables are non-negative:
In conclusion, considering the two objectives of cost (1a) and carbon emissions (1b), and constraints (1c)−(1i), a multi-objective low-carbon supply chain network optimization model (LSM) with the risk of uncertain supply disruptions can be obtained.