Mostafa Hassanein Hussein Mohamed, Heba Ali Abdel Gawad
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引用次数: 0
Abstract
Multi-Criteria Decision Making (MCDM) is a significant challenge across various domains, requiring adept resolution of conflicts arising from diverse objectives and criteria. This study proposes an innovative approach aimed at optimizing controllability, minimizing irreversibility, and maximizing overall effectiveness in control system design to address this challenge. The primary objectives of this study are to introduce a novel methodology for selecting Heat Exchanger Networks (HEN) using the well-established Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) method. Additionally, a closeness coefficient is introduced to rank alternatives networks based on their proximity to the ideal solution. Two illustrative case studies are presented to showcase the methodology's effectiveness, adaptability, and robustness in discrete multi-criteria decision-making problems, particularly in the context of HEN selection. Consistently identifying HEN configurations that fulfill controllability objectives, the methodology demonstrates its effectiveness and potential for broader applications beyond HEN optimization. The case study results affirm the adaptability and robustness of the proposed approach. In summary, this paper introduces an original and versatile approach to address the complexities of multi-criteria decision-making, specifically in the context of HEN selection. Rooted in the TOPSIS method and fortified by the closeness coefficient, the methodology holds promise for intricate decision-making processes and offers transformative possibilities for control system design. The study concludes by inviting further exploration of the proposed methodology, emphasizing its significant contribution to the field and its potential for widespread impact. Researchers and practitioners are encouraged to investigate and apply this innovative approach in diverse decision-making scenarios. The ranking results reveal that alternatives M and K is the optimum one among all the alternatives for both cases with a closeness coefficient equal to 0.651 and 0.971.
多标准决策(MCDM)是各领域面临的一项重大挑战,需要巧妙地解决不同目标和标准带来的冲突。为应对这一挑战,本研究提出了一种创新方法,旨在优化控制系统设计的可控性、最小化不可逆性和最大化整体效益。本研究的主要目的是介绍一种新方法,利用成熟的理想解相似度排序技术(TOPSIS)选择热交换器网络(HEN)。此外,还引入了一个接近系数,根据备选网络与理想解决方案的接近程度对其进行排序。本文介绍了两个示例研究,以展示该方法在离散多标准决策问题中的有效性、适应性和稳健性,特别是在 HEN 选择方面。该方法始终能确定满足可控性目标的 HEN 配置,证明了其有效性以及在 HEN 优化之外更广泛应用的潜力。案例研究结果肯定了所提方法的适应性和稳健性。总之,本文介绍了一种原创的多功能方法来解决多标准决策的复杂性,特别是在 HEN 选择方面。该方法以 TOPSIS 方法为基础,并通过接近系数加以强化,有望用于复杂的决策过程,并为控制系统设计提供了变革的可能性。本研究最后邀请大家进一步探讨所提出的方法,强调其对该领域的重大贡献及其产生广泛影响的潜力。我们鼓励研究人员和从业人员在各种决策场景中研究和应用这种创新方法。排序结果显示,在两种情况下,备选方案 M 和 K 是所有备选方案中的最优方案,其接近系数分别为 0.651 和 0.971。