Binary particle swarm optimization for variables selection optimization in Taguchi’s T-Method

IF 0.3 Q4 MATHEMATICS Matematika Pub Date : 2020-03-31 DOI:10.11113/matematika.v36.n1.1181
N. Harudin, K. R. Jamaludin, F. Ramlie, M. N. Muhtazaruddin, Che Munira Che Razali, W. Z. A. Wan Muhamad
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引用次数: 2

Abstract

Prediction analysis has drawn significant interest in numerous field. Taguchi’s T-Method is a prediction tool that developed practically but not limited to small sample analysis. It was developed explicitly for multidimensional system prediction by relying on historical data as the baseline model and adapting the signal to noise ratio (SNR) as well as zero proportional concepts in strengthening its robustness. Orthogonal array (OA) in T-Method is a variable selection optimization technique in improving the prediction accuracy as well as help in eliminating variables that may deteriorate the overall performance. However, the limitation of OA in dealing with higher multidimensionality restraint the optimization accuracy. Binary particle swarm optimization used in this study helps to cater to the limitation of OA as well as optimizing the variable selection process to better prediction accuracy. The results show that if the historical data consist of samples with higher correlation of determination (R2) value for the model creation, the optimization process in reducing the number of variables would be much reliable and accurate.  Comparing between T-Method+OA and T-Method+BPSO in four different case study, it shows that T-Method+BPSO performing better with greater R2 and means relative error (MRE) value compared to T-Method+OA.
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Taguchi t法变量选择优化的二元粒子群优化
预测分析已经引起了许多领域的广泛关注。田口的t -法是一种实用但不局限于小样本分析的预测工具。该模型以历史数据为基准模型,采用信噪比(SNR)和零比例概念增强鲁棒性,明确地为多维系统预测而开发。t法中的正交阵列(OA)是一种变量选择优化技术,在提高预测精度的同时有助于消除可能影响整体性能的变量。然而,OA在处理较高多维度时的局限性制约了优化的精度。本研究采用的二元粒子群优化方法既可以解决OA的局限性,又可以优化变量选择过程,提高预测精度。结果表明,如果历史数据是由判定(R2)值相关性较高的样本组成的,那么减少变量数量的优化过程将更加可靠和准确。对比T-Method+OA和T-Method+BPSO在4个不同案例中的表现,结果表明T-Method+BPSO在R2和平均相对误差(MRE)值上优于T-Method+OA。
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来源期刊
Matematika
Matematika MATHEMATICS-
自引率
25.00%
发文量
0
审稿时长
24 weeks
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