2. Literature Review
Warehousing is the process of temporarily storing stock-keeping units (SKUs) between suppliers (manufacturers), and consumers; its main activities include retrieving, put-away, replenishment, order picking, sortation, cross-docking, and shipping [
6]. Receiving is to unload SKUs at inbound decks, inspect the SKUs, and update the inventory records. Put-away is to transfer the SKUs between different areas. Replenishment is to move the SKUs from a reserve area to a forward area. Order picking is to retrieve distinct SKUs from storage locations. Sortation is to group customer orders that have been picked in different batches. Packing is to put the sorted customer orders into a container. Cross-docking is to transfer SKUs directly from inbound to outbound decks. Shipping is to inspect the packed customer orders, update the inventory records, and load the packed customer orders at the outbound decks. All these activities can be classified into four flows [
5,
6]: Flow 1 (receiving–cross-docking–shipping), Flow 2 (receiving–reserve area–shipping), Flow 3 (receiving–reserve area–forward area–shipping), and Flow 4 (receiving–forward area–shipping). These warehouse areas, flows, and activities are also visually introduced in
Figure 1.
Among various warehouse activities, order picking is the most expensive activity in terms of EC and OT, and human- or automated machine-based order picking systems are used in a warehouse [
6,
9]. Among a variety of order-picking systems, two typical order-picking systems are (i) parts-to-picker and (ii) picker-to-parts systems. More specifically, an automated storage/retrieval system (AS/RS) is typically used for a parts-to-picker system, and forklifts can be used for all warehouse areas, including a picker-to-parts system. Thus, we can focus on the activities of AS/RS and forklifts in picker-to-part and part-to-picker systems to investigate EC and OT for warehouse operations.
A reserve area is usually occupied by parts-to-picker systems such as AS/RS. AS/RS uses various computer-controlled systems to automatically store and retrieve unit loads and can store and retrieve unit loads. The movement and travel time of the AS/RS crane or storage and retrieval (S/R) machine and picking time can directly decide AS/RS EC and OT [
10,
11]. Different types of AS/RS show different energy effectiveness in warehouse systems [
12,
13,
14,
15]. Various AS/RS types can be recognized in the warehouse industry according to the S/R machines, handling, and rack properties in the system. Among different types of AS/RS, autonomous vehicle storage and retrieval systems (AVS/RS) have been broadly considered in the literature since these systems provide desirable flexibility by changing the number of vehicles to deal with the fluctuation in warehouse demand [
7]. Besides, different AVS/RS designs such as shuttle-based storage and retrieval systems (SBS/RS) have been studied in the literature [
8]. A basic AS/RS includes single-deep stationary racks in which S/R machines can directly store or retrieve unit loads. In some cases, a part of a unit load is considered for which a person can stand on an S/R machine to retrieve the required number of SKUs from the rack storage location. AS/RS can also bring the unit loads at the input/output (I/O) point by aisle-bound S/R machines, and pickers take the required number of SKUs; then, unneeded SKUs are returned to the storage location. A typical AS/RS handles one unit load (usually, in pallet size) at a time by a single shuttle on one S/R machine; an S/R machine is not able to change its aisle (aisle-captive type). For our study, this general type of AS/RS is considered since it is widely used.
Generally, a forward area is used for supporting order-picking activities and for storing fast-moving items that do not require a large amount of space in racks or on a floor [
5,
16]. Typically, a forward area is occupied by a picker-to-part system, where order picking equipment or people drive or walk along the aisles to pick items. Activities of a picker-to-part system can be classified into two types: low-level and high-level pickings. For low-level pickings, order pickers pick items from storage racks and bins while picking items from high storage racks for high-level pickings [
6]. Since forklifts are typically used for order-picking activities, studies of forklifts will play a key role in EC and OT analysis in a warehouse forward area [
17]. In addition, more than 60% of forklifts are powered by electricity, and therefore, the research focus needs to be on electric forklifts rather than on propane or diesel forklifts [
9]. We also consider only electric forklifts in this study.
Forklifts and AS/RS are the most typical equipment and tools for warehouse forward and reserve areas, and their performance in terms of EC and OT is not independent of each other. This interdependency is observed when loads are handled by forklifts or other material handling equipment at AS/RS I/O points from a reserve area to other warehouse areas [
18]. Flow 3 in
Figure 1 shows this interdependency more specifically; Flow 3 accounts for a large material proportion, and the unit loads are always needed to replenish the picker-to-parts system in a forward area. This fact suggests that the parts-to-picker (reserve area) and picker-to-parts (forward area) systems influence each other in affecting EC and OT. For example, a delay in the parts-to-picker system can cause a subsequent delay in the picker-to-parts system, and forklift issues in the picker-to-parts system can result in another issue in the parts-to-picker system. Thus, a comprehensive analysis to identify significant factors and their interactions in both parts-to-picker (reserve area) and picker-to-parts systems (forward area) needs to be conducted.
Since interdependency between parts-to-picker and picker-to-parts systems can be observed at AS/RS I/O points, it is necessary to analyze the direct effects of buffer capacity (that is, the number of designed AS/RS I/O points) on EC and OT. A variety of factors including order size and the number of forklifts and S/R machines are also crucial in investigating EC and OT for both warehouse areas, simultaneously. Moreover, other warehouse activities such as cross-docking, put-away, and replenishment under different warehouse flows are also related to both picker-to-parts and parts-to-picker systems in affecting EC and OT. Thus, warehouse flow rates, which reflect different proportions among the four warehouse activities in
Figure 1, are also required to be studied when we consider EC and OT. Overall, we can consider the following five important factors: (i) the number of forklifts, (ii) the number of S/R machines, (iii) the I/O buffer capacity of the AS/RS, (iv) the order size, and (v) the warehouse flow rate.
The number of energy-aware warehouse studies has increased in the recent literature, and energy saving of material handling equipment has been receiving as much attention as other energy-aware warehouse topics such as building, lighting, and HVAC [
2,
4]. A comprehensive literature review of the EC of material handling equipment was provided in a survey by the study in [
19]. The analysis of this review shows that the analytical and simulation methodologies have been considered much more than the methodologies supported by empirical data [
10]. In some cases, mathematical optimization models may cause significant errors in interpreting the performance of warehouse systems since they usually use a limited number of deterministic factors and assumptions; moreover, they may not be able to handle a complex warehouse system and its changes over time. For example, the forklift EC significantly depends on load weights, and the weights may vary during forklift operations over time. Therefore, a simulation approach, which considers the changes in warehouse effective factors over time, can represent a better warehouse state for warehouse enterprises to make decisions in minimizing EC while responding to customer orders on time. Most current studies, however, have focused on mathematical models to determine the scheduling of forklift battery charging in making picker-to-parts systems sustainable; conversely, only a few studies have considered the energy-aware picker-to-parts systems by simulation as presented in
Table 1. One example is the work of [
20], who designed a simulation model to compare electric and fuel forklifts in terms of GHG for inbound warehouse activities. The results recommend using electric forklifts instead of fuel forklifts for the low- to medium-weight SKUs. The study in [
21] also investigates replenishment and order-picking activities to minimize travel time and cost by simulation and a mathematical model. The proposed simulation uses the Dijkstra algorithm to address the forklift routing problem. The simulation analysis of the study also shows that EC reduction is significantly affected by the warehouse layout, operations, and material handling equipment. The advantages of simulation over mathematical models are described for warehouses in
Table 1; most studies have broadly taken the same advantages in analyzing the parts-to-picker systems (AS/RS types).
Table 1 shows that most simulation studies have been conducted either in a parts-to-picker system or in a picker-to-part system. We can also see that most parts-to-picker system studies focus on AS/RS or their variants. These observations clearly show that there exists a lack of research investigating integrated warehouses considering both forward and reserve areas, including those with AS/RS and forklifts.
AS/RS energy efficiency has become crucial in recent years for warehouses in order for them to become sustainable in all design factors in recent years [
34]. In other words, a warehouse can be more sustainable by controlling AS/RS from an energy-aware perspective [
15]. In particular, warehouse sustainability can be guaranteed by considering the relationships between inventory management, warehouse management, AS/RS EC, and GHG emissions [
25]. The authors of [
25] propose an integrated simulation to investigate the relationship between inventory management and warehouse GHG emissions. The study shows that AS/RS GHG emissions are lower than the GHG emissions generated by wide/narrow-aisle warehouses. The study in [
11] also applies simulation to study the picking time and EC when S/R machines of an AS/RS are in an idle state; the results suggest that the movements of S/R machines cause a decrease in picking time and an increase in EC when the storage assignment and replenishment are determined. The proposed model in [
26] considers the effects of AS/RS rack shapes on EC with a simulation time-based model; the study presents hybrid constraint programming and a large neighborhood search. The simulation is also designed particularly for storage assignment and operation sequencing problems. The results of the study demonstrate that there is a notable relationship between EC and rack height. Moreover, the authors of [
33] examine different I/O point policies for AS/RS in which conveyors are used for depth transportation. The study formulates a travel time model which is verified by simulation. In terms of travel time, the study results show that a mid-point elevation policy is more effective than other policies.
Different types of AS/RS are categorized as complex systems with dynamic factors, so most AS/RS studies have widely studied them with simulation approaches. Among different types of AS/RS, the autonomous vehicle storage and retrieval system (AVS/RS) has been broadly considered in the literature since this system provides desirable flexibility by changing the number of vehicles to deal with the fluctuation of warehouse demand. Moreover, different AVS/RS designs such as shuttle-based storage and retrieval systems (SBS/RS) have been studied in the literature. For example, the study of [
23] uses simulation to verify an analytical model formulated based on an open queuing network approach for an AVS/RS. The study formulates the model to examine the cycle time and waiting times of tote movements with a captive-tier configuration. The results show that the average cycle time and waiting time could be reduced by applying the proposed model. The authors of [
27] use an analytical model and simulation to study the travel time/distance and cycle time for single- and dual-command cycles of an AVS/RS. The proposed model is validated by simulation, and different layout configurations with multiple deep storage lanes are considered for a real warehouse. The approach in [
30] presents a simulation model for the travel time and EC to examine and compare the energy balance and recovery measurements of an AVS/RS. The results of the study indicate that around 28% of EC could be recovered in the AVS/RS. The research in [
31] applies simulation to verify a travel time model formulated for a tier-to-tier SBS/RS under a dual command. The study investigates the SBS/RS performance by alternative factors such as the physical configuration, vehicle acceleration/deceleration (A/D) rate and velocity, and shuttle operational probability.
If a single S/R machine is considered for AS/RS, the basic physics laws to calculate EC and power of S/R machines can be applied to forklifts and S/R machines. Then, the power and EC of simulated S/R machines and forklifts can be measured by previous studies [
8,
12,
35,
36,
37]. For the travel time models, the study of [
38] can be referred to. Also, most existing studies do not utilize real data on EC and the movements of forklifts. To address this lack of studies, we use (i) power data on forklift battery chargers collected from experiments and (ii) forklift power and travel data provided by a forklift manufacturer [
2,
39]. From these datasets, this research can perform a more realistic EC and OT analysis.
Design of experiments (DOE) is a robust method and has been extensively used for simulation results in the literature to identify significant factors affecting the various measures of warehouse performance. Researchers have also applied this method to determine the relationships between different warehouse factors over time from the simulation results as shown in
Table 1. The authors of [
32] use a simulation-based experimental design to address the effects of various physical designs, storage policies, and environmental factors on the travel time of a single-crane multi-aisle AS/RS with a single command cycle. The study shows that the small number of aisles decreases the advantages of a cross-aisle full-turnover storage policy while increasing the benefits of a random storage policy. The study of [
24] presents a simulation-based DOE to identify key factors between AVS/RS tier-captive and tier-to-tier configurations. The proposed DOE examines the effects of AVS/RS factors on different performance measures such as cost. The analysis of the study also shows that the cost could be minimized by decreasing the number of aisles and increasing the aisle length. The research in [
22] uses a simulation-based DOE to find significant factors affecting the performance of AVS/RS in terms of average storage and retrieval cycle time, and the average utilization of lifts and vehicles. The study defines different scenarios for lifts and vehicles with various arrival rates. The results show that the combination of the highest factor levels could present the best scenario for the AVS/RS system. The author of [
8] also applies a simulation-based experimental design to recognize significant factors influencing the pre-defined performance measures of a shuttle-based storage and retrieval system (SBS/RS). The study uses a full factorial design to investigate the effects of velocity, acceleration, and the number of bays and tiers on the average cycle time, energy regeneration, and EC. The author of [
28] proposes a DOE for an SBS/RS to find an optimized scenario for single and dual command cycle times and throughput. The factors considered in the study include the number of bays and tiers, shuttle A/D rate and velocity, and elevator A/D rate and velocity. The results exhibit that the best scenarios belong to the small number of bays and tiers. The study in [
29] also applies a similar DOE with the same performance measures and different design factors such as the number of bays and minimum warehouse volume for an SBS/RS. The results of the study indicate that the SBS/RS system operates more efficiently with high racks and a small number of tiers.
As shown previously, both warehouse forward and reserve areas need to be studied together since they are interconnected in evaluating EC and OT. Thus, we designed an energy-aware simulation model in SIMIO software (version 15) and integrated warehouse forward and reserve areas by considering AS/RS, forklifts, and storage racks. In this research, we also apply real power and movement data to support the proposed energy-aware simulation of forklifts and S/R machines, and this endeavor will contribute to filling the lack of real-power-based simulation studies in the literature. In order to consider various warehouse activities such as cross-docking, replenishment, and put-away under various warehouse flows, five factors are considered in DOE: (i) the number of forklifts, (ii) the number of S/R machines, (iii) the I/O buffer capacity of the AS/RS, (iv) the order size, and (v) the flow rate. The flow rate factor is defined based on the proportion of loads on warehouse flows moving through forward and reserve areas. Factorial design is used for DOE to identify the significant factor(s) influencing EC and OT from the simulation results. DOE analyses will provide a comprehensive investigation for warehouse decision-makers to improve EC and OT in the warehouse reserve and forward areas together. Thus, this study will help industrial practitioners reduce and save EC and OT in warehouse operations. The results from this study can also encourage and benefit relevant warehouse research studies by providing real EC and movement data from forklifts and battery chargers. The rest of this paper is organized as follows.
Section 3 presents relevant models for warehouse simulation as well as EC. DOE results are provided in
Section 4, and we discuss the results with potential future research work in
Section 5.