COMPREHENSIVE SYSTEM ARCHITECTURE FOR HOUSEHOLD REPLENISHMENT SYSTEM: SIMULATION OPTIMIZATION FOR INVENTORY REPLENISHMENT POLICY CONSIDERING QUALITY DEGRADATION & STOCHASTIC DEMAND
Date
2024
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Binghamton University
Abstract
Food wastage because of the lack or incompletion of a Household Replenishment
System is an essential topic to be addressed. Appropriately using the Internet of Things
(IoT) and Artificial Intelligence (AI) technologies with particular components is needed
to design a smart Household Replenishment System to reduce food waste. This
dissertation develops a unified framework and conceptual system architecture for the
implementation of a Household Replenishment System, presents an object recognition
framework to identify labeled and unlabeled items inside a smart refrigerator, and
showcases a low-cost installation model for a smart refrigerator. It develops and
validate a simulation optimization model of perishable items inside a smart refrigerator
for an optimal replenishment policy. To accomplish those goals, this dissertation
initially provides comprehensive analyses and a summary of the literature using IoT
and AI tools for perishable items storage compartments, as they are always full of items
that need to be monitored. This comprehensive research followed the PRISMA search
strategy, which was conducted to point out the approaches, contributions, components
used, and limitations of the reviewed papers in developing a unified framework for a
household replenishment system. More specifically, 70 papers were examined in
chronological order starting from 2000 when LG Electronics invented the first smart
refrigerator, and research on technology involvement in food storage compartments
increased. The analysis found 43 approaches using IoT technology, 27 using AI, and in
the past couple of years, the use of AIoT has been trending. The future directions for
researchers were acquired from the limitations of the reviewed papers, and they could
enhance the household replenishment system by adding the features to smart food
storage compartments
v
The comprehensive research helps fulfill an objective of this dissertation, system
architecture framework The system architecture acts as a road map for developers to
implement a Household Replenishment System. It sheds more light on one of the most
important techniques of AI, object recognition. A framework of object recognition is
developed. The developed object recognition provides insight into the type of
information about the stored items that could be obtained by the Household
Replenishment System. A practical example of a cost model is presented. The
developed cost model minimizes the total installation cost of the smart refrigerator
based on household preferences using linear programming, adoption of capital
budgeting, and multidimensional knapsack problems. The object recognition
framework presented is conceptual. Therefore, several assumptions were used to
develop a simulation optimization model of the Household Replenishment System.
The simulation optimization model uses discrete-event simulations and a periodic
policy considering the review period, minimum stock level, and maximum stock level
(T, s, S). The simulation optimization model finds the optimal replenishment policy to
minimize the total Household Replenishment Systems’ inventory cost. The simulation
optimization model considers holding, shortage, wastage, and order costs as
components in the objective function, which accounts for stochastic demand, variation
in life span, and quality degradation rates of stored items. The simulation optimization
model was tested on single and multiple items, with different scenarios for the multipleitem cases. Experimental runs of the simulation optimization model were completed,
validated, and analyzed. The design of the experiment and sensitivity analyses were
applied. The simulation optimization model successfully generated a set of top five
optimal replenishment policies for the household to choose from. Further investigation
into smart home appliances would lead to extensive approaches like smart shops,
vi
industries, and eventually smart cities. Future work for this dissertation could be
achieved by enlarging the scope of research to involve patents, dissertations, and theses
that used Artificial Intelligence of Things (AIoT) technologies to improve the
Household Replenishment System.
Description
Keywords
Household Replenishment System, Smart Refrigerator, Artificial Intelligence, Internet of Things, Simulation Optimization, Image Recognition