工业自动化中结构随机矩阵模型的增强能量优化

A. Bishnoi, Vivek V
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引用次数: 0

摘要

结构化随机矩阵(SRM)模型是一种日益流行的工业自动化方法。该模型基于这样一种思想,即工业机器的控制系统以某种方式“结构化”,具有某些可以预测并用于对系统行为建模的属性。SRM结合了随机矩阵理论的原理,为工业自动化提供了一个高效、可靠和现实的模型。SRM模型通过采用大量变量来工作,例如机器的类型、机器的速度、所需部件的数量以及系统中要使用的不同组件的数量。然后使用这些变量生成一个随机矩阵,然后可以对其进行分析,以确定不同变量之间的模式和相关性。这使得工程师能够开发更精确的系统模型,并识别潜在的问题和解决方案。除了提供更精确的模型外,SRM模型还允许工程师通过减少系统中使用的变量数量来简化设计过程。这种简化意味着系统中需要的部件更少,从而降低了系统的成本和复杂性。此外,通过降低系统的复杂性,工程师可以减少花在维护和维修上的时间,从而节省资金并提高效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Energy Optimization of Structured Random Matrix Model in Industrial Automation
The Structured Random Matrix (SRM) model is an increasingly popular approach to industrial automation. This model is based on the idea that the control systems of industrial machines are "structured" in a certain way, with certain properties that can be predicted and used to model the behavior of the system. SRM incorporates the principles of random matrix theory in order to provide an efficient, reliable, and realistic model for industrial automation. The SRM model works by taking a large set of variables, such as the type of machine, the speed of the machine, the number of required parts, and the number of different components to be used in the system. These variables are then used to generate a random matrix, which can then be analyzed to identify patterns and correlations between the different variables. This allows engineers to develop more accurate models of the system, as well as to identify potential problems and solutions. In addition to providing a more accurate model, the SRM model also allows engineers to simplify the design process by reducing the number of variables used in the system. This simplification means that fewer parts are needed in the system, which reduces the cost and complexity of the system. Furthermore, by reducing the complexity of the system, engineers can reduce the amount of time spent on maintenance and repairs, which saves money and increases efficiency.
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