Estimation of Washing Performance in Washing Machines with Neural Networks

Yakup Aktaş, Merve Acer Kalafat
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引用次数: 2

Abstract

There are many standard procedures that washing machines must provide. One of them is the washing performance, which shows the cleanliness of the laundry. This measurement, called the washing performance index, must meet the criteria determined according to the relevant standard in repeated tests. However, the washing and cleaning process is a complex process affected by many parameters such as mechanical effects, chemical effects, temperature, and amount of water. We propose an approach to determine the effect of these multi-parameter effects on washing performance and estimate the washing performance of the washing machine without the need for trial tests before the algorithm design. The approach uses artificial neural network algorithms to estimate washing performance by varying the relevant input parameters accurately. In order to establish the structure of the neural network, we have performed experimental tests on washing machines with different features and different input parameters and used them for training, validation, and test sets. According to the results obtained, it has been shown that it is possible to predict the washing performance index with neural networks accurately.
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用神经网络估计洗衣机的洗涤性能
洗衣机必须提供许多标准程序。其中之一是洗涤性能,它显示了衣物的清洁度。这种测量,称为洗涤性能指标,必须符合根据相关标准在反复试验中确定的标准。然而,洗涤和清洗过程是一个复杂的过程,受许多参数的影响,如机械效应、化学效应、温度和水量。我们提出了一种方法来确定这些多参数影响对洗涤性能的影响,并估计洗衣机的洗涤性能,而不需要在算法设计之前进行试验测试。该方法采用人工神经网络算法,通过改变相关输入参数来准确估计洗涤性能。为了建立神经网络的结构,我们对具有不同特征和不同输入参数的洗衣机进行了实验测试,并将其用于训练、验证和测试集。结果表明,利用神经网络对洗涤性能指标进行准确预测是可行的。
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