Forecasting automobile warranty performance in presence of ‘maturing data’ phenomena using multilayer perceptron neural network

Bharatendra Rai , Nanua Singh

Journal of Systems Science and Systems Engineering ›› 2005, Vol. 14 ›› Issue (2) : 159 -176.

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Journal of Systems Science and Systems Engineering ›› 2005, Vol. 14 ›› Issue (2) : 159 -176. DOI: 10.1007/s11518-006-0187-6
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Forecasting automobile warranty performance in presence of ‘maturing data’ phenomena using multilayer perceptron neural network

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Abstract

Automobile companies that spend billions of dollars annually towards warranty cost, give high priority to warranty reduction programs. Forecasting of automobile warranty performance plays an important role towards these efforts. The forecasting process involves prediction of not only the specific months-in-service (MIS) warranty performance at certain future time, but also at future MIS values. However, ‘maturing data’ (also called warranty growth) phenomena that causes warranty performance at specific MIS values to change with time, makes such a forecasting task challenging. Although warranty forecasting methods such as log-log plots and dynamic linear models appear in literature, there is a need for applications addressing the well recognized issue of ‘maturing data’. In this paper we use an artificial neural network for the forecasting of warranty performance in presence of ‘maturing data’ phenomena. The network parameters are optimized by minimizing the training and testing errors using response surface methodology. This application shows the effectiveness of neural networks in the forecasting of automobile warranty performance in the presence of the ‘maturing data’ phenomena.

Keywords

Maturing data or warranty growth / repairs per thousand / multilayer perceptron neural network / normalized root mean square error / signal-to-noise ratio / central composite design

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Bharatendra Rai, Nanua Singh. Forecasting automobile warranty performance in presence of ‘maturing data’ phenomena using multilayer perceptron neural network. Journal of Systems Science and Systems Engineering, 2005, 14(2): 159-176 DOI:10.1007/s11518-006-0187-6

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