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The domain of operational research involves various techniques applied for complex problemsolving and arriving at decisions. Operations research methodologies are applied by organizations to solve real-life problems, as they assist in managing all operations efficiently. Hence, operations research has emerged as a scientific method for problem-solving by engaging quantitative information for enhanced decision-making methodologies of operations research including probability, statistics, simulation and optimization. This study provides an introduction to the use of methods from operations research in scientific decision-making, design, analysis and management. It also includes a guide to using these approaches. The objective of this project was to produce a text that is both comprehensible and practical. An in-depth investigation into the mathematical models and the tried-and-true and cutting-edge approaches to problem-solving that lie at the foundation of today's software tools for quantitative research and deliberation has yielded insights that are both theoretically sound and practically applicable. While probability and statistics enable us to arrive at predictable solutions applicable in risk scenarios by applying mathematical algorithms, simulation allows the construction of models for solution testing before applying them. Optimization allows us to achieve optimum results within a given condition. Arriving at suitable solutions using operations research follows several steps by way of problem identification, construction of the mathematical model, deriving solutions from the model constructed, testing of the model, establishing control over solutions and finally arriving at the solution to implement them. The scope of this chapter will explore all such methodologies in detail and evaluate concepts that can be reliably applied in cases of smart edge computing.
The use of quantitative techniques for the purpose of assisting analysts and decision-makers in the process of creating, assessing and improving the performance or operation of various types of systems is what is known as "operations research". It does not matter whether the systems studied are monetary, scientific or industrial in nature; all of them can be examined within the rigorous framework of the scientific method (Gupta et al. 2021). When used logically, the analytical techniques from many different disciplines that make up operations research can aid decision-makers in problem-solving and maintaining optimal control over the workings of systems and organizations. If a system is poorly defined or understood, operations researchers can use their methods to better understand its behavior and, perhaps more importantly, identify which parts are within their control. Quantitative decision problems, especially those involving the management of scarce resources, are the primary focus of operations research, an applied discipline that focuses on optimization. Industrial companies, banks, hospitals, transit systems, power plants and governments all face such challenges in their daily operations. Operations research analysts create and use mathematical and statistical models to help analyze and solve complex decision-making problems. They are problem formulators and solvers, just like engineers. Mathematical modeling, analysis and prediction of outcomes under many scenarios are central to their work. Techniques for mathematical optimization, probability and statistical approaches, experimentation and computational modeling can be used in the investigation.
Furthermore, systems whose behavior is already well known can be optimized with the use of operations research techniques. After all, the purpose of using mathematical, computational, and analytical tools and devices is to simply provide information and insight; ultimately, it is the human decision-makers who will use and implement what has been learned through the analysis process in order to achieve the best possible performance of the system (Conboy et al. 2020). The management of businesses can benefit from the use of the analytical approach known as operations research (OR), which is used to solve problems and make decisions. In the field of operations research, issues are first deconstructed into components before being addressed using mathematical analysis in predetermined processes. The procedure of operations research can often be summarized as follows:
During World War II, many military strategists came up with the idea that would later become known as operations research. After the war, the methodologies that were developed via their operations research were used to find solutions to issues that arose in the realms of industry, the government and society (Hubbs et al. 2020). In the years leading up to World War II, operations research developed into a distinct academic field. During the 1930s, the primary focus of the expansion of the British military was on the creation of new weapons, gadgets and other forms of support equipment. However, the build-up was of unprecedented magnitude, and it became clear that there was also an urgent need to develop systems that would ensure the most advantageous deployment and management of materials and manpower.
Gonçalves et al. (2020; Hsu et al. 2020) state that the goal of operations research is to optimize system performance such that it functions at its highest level possible given the constraints of the problem. Comparison and elimination of potentially useful solutions are also part of the optimization process. Compared to traditional software and data analytics tools, a better way to make decisions is provided by the field of operations research. Businesses can benefit from enlisting the help of operations research experts when it comes to collecting more comprehensive datasets, weighing all their options, making more accurate predictions and estimating their level of risk.
This chapter is organized into four areas, beginning with an introduction to the areas of operations research in the modern field of computing. Second, the application of operations research in the IIoT (Industrial Internet of Things), smart edge computing and sensor data is discussed. Subsequently, paradigms and procedures are represented. Finally, the chapter concludes with a summary of the applications of operations research.
Operations research is a science that focuses on problem-solving as well as decision-making, and it is widely regarded as a valuable tool for assisting in the resolution of management issues. Making decisions that have a significant impact on many people may be quite challenging. A decision-maker must carefully consider their options after considering several factors that interact with one another (Pokrovsky 2009). Making a choice is sometimes referred to as a cognitive process. This word is used in cognitive psychology to describe the action of thinking and relates to the processing of information. Each decision that is made ultimately leads to a real consequence, which can take the form of a choice or an action. Decision-making begins with the definition of a problem and concludes with the evaluation of the efficiency of the proposed solutions, whether they are concrete or alternative (Huang et al. 2022).
According to scholars, operations research is closely related to both computer science and analytics due to the computational and statistical aspects that are prevalent in most of both subjects (Bozanic et al. 2020). Researchers in operational research who are presented with a new challenge have the responsibility of determining which of these methods is the most applicable, given the characteristics of the system, the objectives for its development and the limitations of both time and processing capacity. The issue of decision-making is of significant practical importance in a wide variety of domains involving human actions. Probabilistic techniques form the basis for most of the decision-making methods that are currently in use, since it is common to have some uncertainty in the parameters of a real-life system. It is possible that our lack of assurance may be communicated via one of these other forms (Pereira et al. 2020).
Erdogan et al. (2019) claimed that OR is the only option for decision-making (DM), it delivers the facts to managers and allows managers to make correct choices; the problems found were broken down into their fundamental components in order to solve the difficulties. It is also known as a programming approach or applied decision-making, and decision-makers use it as a model-building tool. Researchers put it in a nutshell that OR models eventually became the primary driving factor for the operation of computer tools. According to Liao et al. (2022), the processes of knowledge management include three primary activities: generation, transfer and storage of information. They went into technical detail on how operational research is an applied decision-making theory that involves...
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