多因子实验方案成本费用优化的重力搜索方法的实现

Q3 Computer Science
N. Koshevoy, I. Ilina, V. Tokariev, Anna Malkova, V. Muratov
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引用次数: 0

摘要

提高实验研究效率的主要途径之一是利用方法对实验进行规划。同时,实验策划可以通过减少实验次数,显著减少实验研究的工作量,提高所得结果的准确性和可靠性。其特点是实验方面的实验是不等同的,即它们的实施需要不同的物质和时间成本。在这方面,从成本或时间成本方面优化多元实验计划的问题就出现了。在研究有价值的长期过程时,这一点尤为重要。为了解决多因子实验在成本(时间)成本方面的优化方案问题,有必要开发有效的寻找最优方案的方法及其软件。现有的实验方案优化方法存在速度慢、所研究的目标因素数量有限、并不总能找到精确解等缺点。本文探讨了多因子实验最优成本(时间)计划的引力搜索方法。该方法采用了固体由于引力相互作用而运动的类比。在这种情况下,实验规划矩阵的行被视为这样的实体,它们被放置在其中取决于行之间转换成本的减少(重力)。开发了实现该方法的算法和软件。该程序是用算法语言Python编写的。通过对工艺过程研究的若干实例,证明了引力搜索多因素实验方案最优成本(时间)成本方法的效率和有效性。研究的对象是:多因子实验方案根据成本(时间)成本的优化过程。本课题的研究内容是:多因子实验最优成本(时间)计划的引力搜索方法及其实现软件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of the gravity search method for optimization by cost expenses of plans for multifactorial experiments
One of the main ways to improve the efficiency of experimental research is the use of methods for planning experiments. At the same time, experiment planning can significantly reduce the amount of experimental research by reducing the number of experiments, as well as improve the accuracy and reliability of the results obtained. It is characteristic that the experiments in terms of experiment are not equivalent, that is, their implementation requires different material and time costs. In this regard, the problem arises of optimizing the plans of multivariate experiments in terms of cost or time costs. This is especially important when studying valuable and long-term processes. To solve the problems of optimizing plans for multifactorial experiments in terms of cost (time) costs, it is necessary to develop effective methods for finding optimal plans and their software. Existing methods for optimizing experimental plans are characterized by such shortcomings as low speed, a limited number of studied object factors, and the exact solution is not always found. This article explores the method of gravitational search for the optimal cost (time) cost plan for multifactorial experiments. The method uses the analogy of the motion of solid bodies due to their gravitational interaction. In this case, the rows of the experiment planning matrix are considered as such solid bodies, which are placed in it depending on the decrease in the cost of transitions between rows (gravity). An algorithm and software have been developed that implement the proposed method. The program is presented in the algorithmic language Python. On a number of examples for the study of technological processes, the efficiency and effectiveness of the method of gravitational search for optimal cost (time) costs of plans for multifactor experiments has been proved. The object of the research: processes of optimization of plans of multifactorial experiments according to cost (time) costs. The subject of the study: the method of gravitational search for the optimal cost (time) plans of multifactorial experiments and the software implementing it.
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来源期刊
Radioelectronic and Computer Systems
Radioelectronic and Computer Systems Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
3.60
自引率
0.00%
发文量
50
审稿时长
2 weeks
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