Class-based Storage Location Assignment: An Overview of the
Literature
Behnam Bahrami, Hemen Piri and El-Houssaine Aghezzaf
Department of Industrial Systems Engineering and Product Design, Ghent University, Belgium
Keywords: Warehouse Operations, Class-based Storage Location Assignment Problem, Literature Review.
Abstract: Storage, per se, is not only an important process in a warehouse, also it has the greatest influence on the most
expensive one, i.e., order picking. This study aims to give a literature overview on class-based storage location
assignment (CBSLAP). In this paper, we discuss storage policies and present a classification of storage
location assignment problem. Next, different configuration of classes are presented. We identify the research
gaps in the literature and conclude with promising future research directions.
1 INTRODUCTION
Establishment of effective and smooth logistics
operations is under pressure by the growing trend of
shorter time window order fulfillment, bigger product
assortment and smaller order quantities. Contributing
to a large share of the total product costs, logistics
operations are determinants in company’s survival in
the current competitive business world. The
efficiency and effectiveness of a distribution network,
in turn, greatly depends on the performance of the
nodes in such a network, i.e., the warehouses
(Rouwenhorst et al, 2000). Warehouse operations are
thus crucial in the context of logistics. They provide
a means to make the storage of all kind of inventories,
from raw material to final products, easier among
upstream to downstream stages of a supply chain
(Choy et al, 2017). Planning the warehouse
operations in an effective way is not simple because
they consist of different activities (Lam et al, 2015).
These operations can be categorized into four
activities or processes: receiving, storage, order-
picking and shipping ((van den Berg and Zijm, 1999);
(Gu et al, 2007); (Rouwenhorst et al, 2000)).
The interface of a warehouse for incoming and
outgoing material flow are receiving and shipping.
Storage deals with assignment of products to storage
locations to utilize space as much as possible and
facilitate efficient material handling (Gu et al, 2007).
Order picking is the retrieval of items from their
storage locations and can be performed manually or
(partly) automated (Rouwenhorst et al, 2000).
Storage is traditionally considered as the most
important facet of logistics. Efficient inventory
control, lower personnel cost, higher productivity,
and convenient product identification are the
outcomes of a proper storage system (Fontana and
Cavalcante, 2014). Order fulfillment time, and
thereby customer service level, can substantially be
improved by even slight storage process
enhancements (Fontana and Nepomuceno, 2017).
The amount of stored products, the time and the
rate of reorders, and the place of inventories in the
warehouse are three basic and main issues that should
be addressed in storage function (Gu et al, 2007).
Classical inventory control fields of lot sizing and
staggering deal with the first two topics that are out
of the scope of this paper.
The storage location assignment problem (SLAP)
deals with how to put the stock keeping units (SKUs)
away in a warehouse to optimize a performance
measure (Kovács, 2011). Customers ask for more
diverse products which cause warehouses to take on
larger product assortment and this situation
accordingly leads to a more complex storage location
assignment problem (Choy et al, 2017). Storage
location assignment influences almost all key
warehouse performance indicators including order-
picking time and cost, productivity, shipping and
inventory accuracy, and storage density (Frazelle,
2002). The most important performance measures in
a warehouse are generally related to the time or effort
required for order picking (Kovács, 2011). Picking
performance is directly affected by storage process
and, therefore, it is tried to consider this interaction in
390
Bahrami, B., Piri, H. and Aghezzaf, E.
Class-based Storage Location Assignment: An Overview of the Literature.
DOI: 10.5220/0007952403900397
In Proceedings of the 16th International Conference on Informatics in Control, Automation and Robotics (ICINCO 2019), pages 390-397
ISBN: 978-989-758-380-3
Copyright
c
2019 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
the design stage (Davarzani and Norman, 2015).
Roodbergen and de Koster (2001) have presented
four approaches to reduce travel time or distance for
order picking activity: (1) determining good order
picking routes; (2) zoning the warehouse; (3)
assigning products to the right storage locations; (4)
picking orders in batches. The third approach, storage
assignment of SKUs, is more influential on the
effectiveness of order picking than any of the other
three approaches and a well-designed storage
assignment approach could substantially decrease the
travel distance or time of order picking (Chiang et al,
2014). Higher material handling costs and lower
space utilization are the outcomes of unsystematic
assignment of SKUs to storage locations (Choy et al,
2017).
In the next section, we introduce, classify and
discuss different storage policies and various existing
methodologies of CBSLAP in the literature are
presented. Section 3 is about configuration of classes
and finally we conclude the paper with presenting the
identified research gaps and future research
directions..
2 STORAGE POLICIES
Products can be assigned to storage locations either
arbitrarily or based on certain criteria. The first option
is often referred to as “random policy”; we will refer
to it as the “haphazard policy”. The second option is
referred to as “dedicated storage”. Haphazard storage
assigns SKUs to locations chaotically over planning
horizon while with the dedicated storage the location
are kept for specific products in a warehouse. These
two policies are the extremes of a spectrum of policies
(Malmborg, 1998). In between of these extreme
policies of haphazard and dedicated storage, is class-
based storage policy. Conversely, haphazard and
dedicated storage can be seen as extreme cases of the
class-based storage policy: haphazard storage
considers a single class and dedicated storage
considers one class for each product.
As a general comparison, dedicated storage
locates compact and high-demanded items near the
input/output (I/O) point, thus is more material
handling friendly in comparison to haphazard policy.
On the other hand, it needs more storage space to
accommodate the maximum inventory levels of each
product in their predetermined locations. Class-based
storage is a compromised policy that tries to combine
the advantages of both policies (Gu et al, 2007). A
detailed explanation of each policy will follow.
Since haphazard and class-based policy permit
different SKUs to be put away in the same location
successively, they are also called shared storage
policies, (see figure 1) ((van den Berg and Zijm,
1999); (Kulturel et al, 1999)).
Figure 1: Classification of storage policies.
2.1 Haphazard Storage
The haphazard policy is a simple procedure and the
only information that is needed to implement this
policy is if the storage locations are available or not.
The most common haphazard policies consist of
random location assignment, closest open location,
farthest open location and longest open location, (see
figure 1), (Gu et al, 2007).
In random assignment, the SKUs are assigned to
empty location considering probability. If the
replenishers put away the SKUs however they are
convenient, the result is probably the so called closest
open location storage. They normally put the items in
the first vacant locations they come across, which
eventually leads to a warehouse with full locations
close to I/O point and more spots farther away (de
Koster et al, 2007). Hausman et al (1976) explain if
the SKUs are transported in full pallets, closest open
location storage and random storage result in the
same performance. Farthest open location policy
allocates the most remote free positions from the I/O
point to SKUs. If the locations are assigned to SKUs
based on the time they have not been occupied, then
it is the longest open location policy.
Haphazard storage is a popular policy in practice
due to its simplicity and advantages including space
utilization, simple implementation, immunity to
demand and assortment fluctuations, and uniform
usage of aisles that leads to lower congestion.
However, since SKUs do not have predetermined
locations a tracking system is required that may cause
difficult and confusing positioning. Moreover, in this
class of policies, the lack of a systemic view
Class-based Storage Location Assignment: An Overview of the Literature
391
eventually declines the global warehouse
performance because of not considering consecutive
processes and not utilizing product information
((Chiang et al, 2011); (Quintanilla et al, 2015)).
2.2 Dedicated Storage
In dedicated storage polices a storage location is
allocated and reserved for SKUs over the planning
horizon. This allocation is based on a suitable
criterion. Kallina and Lynn (1976) present four major
determinants for this: compatibility,
complementarity, popularity and space. Compatible
items can be kept nearby one another without taking
risk of contamination, infection, corrosion, or other
damages, and hence incompatible items should not be
stored closely. Complementary refers to those
products that are often concurrently ordered together
and it may be beneficial to keep them in adjacent
locations. Popular items are those that have a higher
demand and if they are stored in locations closer to
I/O point, the total travelled distance reduces since
popular items are the greatest contributor to this
distance. Finally, it is better to allocate the locations
near I/O point to the less bulky items.
The most common criteria in the literature, which
have also been illustrated in figure 1, are explained as
follows.
2.2.1 Part Number
Assigning SKUs based on their part number is
probably the earliest storage policy. Some researchers
(e.g. (Brynzér and Johansson, 1996); (Fontana and
Nepomuceno, 2017)) have already mentioned part
number as a criterion for dedicated policy. Back in the
years, without having an information system to track
the items, dedicated storage based on the part
numbers was helping the storekeepers to find the
position of the SKUs by following the sequence of the
part numbers. Afterwards, when IT solutions became
widespread, cheap and accessible, the application of
part number as a criterion for dedicated policy
became obsolete and old-fashioned.
2.2.2 Turnover
One of the most popular criterion for dedicated
storage assignment is based on the turnover or
demand of the products. With this criterion, the most
desired products are placed to the most accessible
locations which are usually the ones close to I/O
point. Remote locations are assigned to slow-movers
(de Koster et al, 2007). One of the problem with this
policy is that product turnover rate and the warehouse
product portfolio always fluctuate causing violating
turnover-based assignment of locations that
eventually demands relocations of SKUs to keep the
assignment principle and its advantages (Roodbergen
and Vis, 2009). In the literature, the turnover-based
storage (also known as full-turnover or volume-
based) often represents the dedicated policy
2.2.3 Cube-per-order
One of the first dedicated storage algorithm is the
cube-per-order index (COI) which was proposed by
Heskett (1963). The COI is defined as the ratio of
maximum allotted space to the number of
storage/retrieval operations per unit time. The
algorithm places the products with lower COI to more
convenient locations and as COI increases the SKUs
are located in more distant spots farther from I/O
point (Cormier and Gunn, 1992). Although the COI
algorithm was initially conceived as a heuristic,
several authors later showed that it yields an optimal
solution in certain specific environments.
It is worth to mention when single-command, i.e.
either a single storage or a single retrieval in each
cycle happens, is prevalent, then COI is an excellent
candidate. However, Schuur (2015) shows that there
is no performance guarantee when a single-command
storage strategy is implemented for a multi-command
situation, that is, storage and picking of several loads
in one cycle. In particular, the worst-case behavior of
the COI strategy is infinitely bad.
2.2.4 Duration-of-Stay
Even though it was first introduced by Goetschalckx
and Ratliff (1990) as a shared storage policy, we
classify Duration of Stay (DOS) policy as a dedicated
one, because based on our definition it is a criterion
which an items is assigned to a location. With this
policy, in a system where the input and output rate are
equivalent, products units, upon their arrivals, get a
better location if they stay shorter in the warehouse.
In other words, the shorter the DOS of units of
products, the closer the location to the I/O point they
are placed. The information of incoming/outgoing of
all units of a specific must be available to apply DOS
procedure while the only required information for
turnover policy is the turnover rate at product level
(Pohl et al, 2011). This is a crucial consideration as
DOS approach needs the most data in comparison to
other policies for storage location assignment
(Goetschalckx and Ratliff, 1990). Kulturel et al
(1999) simulated the performance of turnover-based
and DOS-based storage and it turned out that the
former had better performance where the reasons may
ICINCO 2019 - 16th International Conference on Informatics in Control, Automation and Robotics
392
stem from the barely existing assumptions of the DOS
model in real situations which are more like a pure
fantasy in warehouse contexts ((Gu et al, 2007);
(Goetschalckx and Ratliff, 1990)).
2.2.5 Correlation
Correlated storage (or family-grouping) considers
products complementary where stores similar
products close to each other in the warehouse. This
strategy requires a suitable index to determine, or at
least estimate, the correlation among items of the
warehouse assortment. The lack of accurate data to
calculate this index confines correlated storage
application. Dependent demands of different products
are easily recognized by the bill of material (BOM) in
production environments. However, these
interrelations are more complex to utilize in
distribution warehouses. These changing and hard to
predict relationships emanate partially from clients
purchase preferences and patterns which can be
derived from different resources such as catalogs,
promotional plans, market surveys and similar
information (Sadiq et al, 1996). Recently the
advances in the field of big data, data analytics and
data mining facilitate identification of correlated
products.
Dedicated storage policies have the lowest space
utilization in comparison to other policies for this
they allot space for all items such that to be able to
accommodate the maximum level of inventory while
most of the time the inventories are not at their
maximum level and even stock-outs may happen (de
Koster et al, 2007).
In addition, contrary to haphazard policies which
utilize the picking aisles evenly, the picking activities
in the COI-based and turnover-based storage policies
concentrate on the regions where items with low COI
and high turnover are located. For one order picker
system, clearly congestion is not an issue. This is also
true for small warehouses as well as large warehouses
divided into zones with one order picker in each zone
(Caron and Perego, 1998). However, in those
environments where several order pickers work
simultaneously the situation is different and more
pickers does not essentially leads to higher
throughput. This issue is more severe in storage
systems where turnover-based approach
implemented, that is, the more the number of workers
the higher the productivity reduction. This is a main
incapability in this class of storage policies which is
more troublesome where demand seasonality is
present as well (Ruben and Jacobs, 1999).
Finally, although dedicated storage yields the
minimum travel time, it is not practically popular as
its implementation is not simple thus is used as a
performance benchmark to evaluate other storage
policies. Even some authors (e.g., (Rosenblatt and
Eynan, 1989)) view its implementation as
practically impossible”. A reason is that abundant
information is a prerequisite for a high performance
from the policy. Accurate data, continuous
supervision and capability to cope with ceaseless
changes are requirements of a successful dedicated
storage which are all difficult to gain and accomplish
in many warehouses ((Tompkins et al, 2010); (Rao
and Adil, 2013)).
2.3 Class-based Storage
Class-based storage is a compromised policy that
classifies SKUs into product classes, based on an
appropriate criteria such as volume or usage rate. The
SLAP now is the problem of assignment of SKUs to
a product class and then a class to a storage region in
the warehouse. Items are positioned in their class
following a simple haphazard rule, e.g. random or
nearest open location. Haphazard policy is actually
the class-based policy with one class and if each
product has its own class, then it is dedicated policy
(Gu et al, 2007). Class-based storage with three
classes often is referred to as ABC storage
(Roodbergen and de Koster, 2009). Class-based
storage is popular among practitioners due to its great
capabilities such as simple implementation,
manageable maintenance and ability to cope with
product mix and demand variations (Le-Duc and de
Koster, 2005). No need for full sorted list of SKUs
and more convenient administration are the reasons
of easier implementation of class-based storage in
comparison to dedicated storage. Class-based storage
also outperforms haphazard storage in terms of travel
time that is comparable to that of dedicated storage as
well (Petersen and Aase, 2004).
The general belief, among the warehouse
community, is that dedicated storage yields lower
travel distances than class-based storage. Petersen
and Aase(2004) demonstrate that a turnover-based
dedicated policy performs better than class-based
policy with three classes but this improvement is less
than 1% that even this may not be true because
haphazard allocation of SKUs in the classes causes
lower storage area and consequently shorter order
picking time (Muppani and Adil , 2008a). Travel time
of class-based policy, in traditional research, is
considered at its best to approach to that of turnover-
based policy. However, Guo and de Koster (2015)
Class-based Storage Location Assignment: An Overview of the Literature
393
show that the average one way travel distance of the
turnover-based storage is not a lower bound in the
warehouse. Space sharing is the answer of this
contradiction; since SKUs share the warehouse space
in haphazard storage hence less space is required
(almost two third) in comparison with turnover-based
policy that subsequently influences the average travel
time. Furthermore, Muppani and Adil (2008b)
observed that where a system suffers from high
inventory fluctuations of SKUs, class-based solutions
perform better than dedicated approach.
The strength of class-based policy is in taking
advantage of the logic of dedicated storage, while
avoiding the exhaustive chores alongside (Petersen
and Aase, 2004). For this, Class-based policy classify
products based on some criteria, and once all products
have their class being determined, neglect the criteria
for the period of planning horizon to exploit the
simplicity and convenience of haphazard storage
policy. Most previous studies used turnover rate as
the basis to classify products for storage assignment
(Chiang et al, 2014) but all other criteria which were
explained for dedicated storage may be applied for
this purpose. This is the reason why these criteria
have been connected to the class-based box with a
dashed line in figure 1.
3 CONFIGURATION OF
CLASSES
The performance of a warehouse is highly affected by
its layout (configuration), the way SKUs are placed in
and picked from locations and also the position of I/O
points. Several authors studied configuration of
classes in a warehouse. A surprising result in this field
is that the optimal configuration for a warehouse with
a specific capacity is independent of the storage
policy. This fact makes the design of storage system
easier since the designers do not have to worry about
which policy is or will be put into practice. They just
need to optimize the configuration considering a
simple (e.g. haphazard) policy, whatever the result is,
the storage shape is optimal for other policies such as
turnover-based or class-based storage (Zaerpour et al
2013)
3.1 Class Formation
Rosenblatt and Eynan (1989) developed a one-
dimensional search procedure to determine optimal
boundaries for class-based policy. They show that
using a relatively small number of classes can result
,in average, travel times which approach travel times
obtained for the turnover-based assignment. Some
authors have already suggested some numbers for
class formation. For instance, Rao and Adil (2013)
claim that maximum of three classes is sufficient to
get a major extent of the benefit of turnover policies
and Guo and de Koster (2015) argue a class-based
policy with a small number of classes, no more than
5, is optimal.
Although conventional research (e.g., (Eynan and
Rosenblatt, 1994), (Rosenblatt and Eynan, 1989))
show that there is inverse relation between picking
time and the number of classes (figure 2), warehouse
managers limit the number of classes to a small
number. Yu et al (2015) demonstrate that the travel
Figure 2: Inverse relation between picking time and the
number of classes (Yu et al, 2015).
time function has a different shape (figure 2) and,
contrary to previous studies, there is an optimum for
the number of classes. Another main result of their
study is the insensitivity of travel time function to the
number of classes in a wide range around the optimal
number of classes which is something between 3 to 8.
This is a good news for the warehouse managers since
this gives them more freedom in implementing class-
based policy and they can also take into account their
practical constraints.
3.2 Implementation of Classes
Hausman et al (1976) consider the problem of finding
class regions for the class-based storage policy. The
authors suggest L-shaped (figure 3(a)) class regions.
This shape is optimal for Chebyshev travel times, if
only single-command cycles are present. They
analytically determine optimal class sizes for two
classes in a square-in-time rack, such that the mean
single-command travel time is minimized. Graves et
al (1977) observe that L-shaped regions are not
necessarily optimal when dual-commands occur.
Petersen and Schmenner (1999) present four
ICINCO 2019 - 16th International Conference on Informatics in Control, Automation and Robotics
394
Figure 3: Implementation of classes.
variations for turnover-based storage: diagonal,
within-aisle, across-aisle, and perimeter storage
which can also be considered as different variations
for class-based policy, (figure 3(b)-(e)). They show
within-aisle storage with a middle I/O point is the best
storage policy for all pick lists. The middle I/O point
is better than the corner I/O point. However, this
difference becomes almost nonexistent for large pick
lists.
The within-aisle strategy has also later been
shown to have a higher performance than other
storage implementation strategies regardless of
thenumber of storage classes. ((Petersen et al, 2004);
(van Gils et al, 2017)).
4 CONCLUSION AND
FUTUREESEARCH
DIRECTIONS
This paper draws a framework for the class-based
storage location assignment problem in the ware-
house storage process. According to the examined
studies, a number of conclusions are addressed.
First of all, we would like to draw the attention of
researchers to integrated warehouse operations. The
importance of integrated warehouse problems has
already been highlighted by some other authors (e.g.,
(Roodbergen and Vis, 2009); (Cergibozan and Tasan,
2016); (van Gils et al, 2017)). However, the focus of
the research community has been on combination of
the storage, batching and routing. The significant
statistical correlation of storage, batching and routing
has already been tested and confirmed.
Second, the potential advantage of integrated
models is clear but they have not still been validated
in complex industrial contexts. This gap is not only
limited to integrated models but also incorporate
studies which just deal with SLAP in its own. The few
published industrial case studies ((van Oudheusden et
al, 1988); (Zeng et al, 2002); (Dekker et al, 2004))
accentuate the lack of balance between papers with an
assumption-restricted modeling approach and those
based on the complex reality of warehouses. This gap
has been also underscored by other studies ((Gu et al,
2007); (Davarzani and Norman, 2015)) in warehouse
literature and it shows the limited cross fertilization
between research community and practitioners. A
good liaison establishment between academia and
industry is a win-win situation. On the one hand, it
helps researchers in better understanding the reality to
identify possible future research challenges from the
industrial point of view. On the other hand, research
results with a validity check on real-case
environments will have a more substantial impact on
practice. Therefore, practical case studies and
research, explaining applied or validated method-
logies which illustrate the potential advantages of
implementing scientific literature results to real
problems, or on discovering the unknown challenges
which hinder their successful implementation is
another direction for future contribution.
Some researchers introduced other measures for
SLAP along with economics measures. Future
research should focus on other performance measures
as well. For instance, an important subject in progress
is the sustainability issues in logistics. Sustainable
operations have been widely studied in past years, but
the inclusion of metrics in warehouse management
have still place for examination (Staudt et al, 2015).
Although energy efficiency and environmental
performance have gained increasing attention during
past couple of decades in operations management
literature, majority of the reviewed literature focused
on economic efficiency of SLAP. Social awareness
and governmental regulations about global warming
and environmental issues spotlight this topic. Another
instance is the inclusion of human factors into SLAP
models. Reminding that majority of operating
warehouses are still manual systems, put more
emphasize on the importance of further research in
this field.
Finally, the early focus of warehouse
management research was on process improvement
which essentially does not need IT tools. However,
the complexity of warehouse operations has increased
in recent years and more complicated algorithm and
models appear in warehouse management
publications (Staudt et al, 2015). Application of
information systems in warehouse management is a
growing tendency and the related new technologies
Class-based Storage Location Assignment: An Overview of the Literature
395
will certainly be used for decision making in the
future. We believe there is big room to study
opportunities and challenges of employing more
advanced technologies and initiatives such as
augmented reality, internet of things, cloud
technologies, cyber physical systems and Industry 4.0
not only in SLAP but also in other warehouse
processes in general.
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