K-nearest neighbour technique for the effective prediction of refrigeration parameter compatible for automobile

Autor: Srinivasan Rajendrian, Sundarrajan Munusamy, Saravanan Chinnaiyan, Saravanakumar Perundyurai Thangavel, Suresh Vellingiri
Rok vydání: 2020
Předmět:
Zdroj: Thermal Science, Vol 24, Iss 1 Part B, Pp 565-569 (2020)
Scopus-Elsevier
ISSN: 2334-7163
0354-9836
DOI: 10.2298/tsci190623436p
Popis: Manufacturing simulation is an encouraging research area in resent decade. Creation or development of better simulation tool or technique is one of the major intension in manufacturing simulation. In resent research most of the manufacturing processes are simulated successfully. But some processes are not yet simulated effectively, especially automatic air conditioning (AC) system or refrigeration system. The automatic AC system for the passenger vehicle are not yet effectively simulated. Hence in this paper a machine learning technique is adopted for the effective prediction of parameter of automatic AC system. The proposed system uses k-nearest neighbour technique for the prediction of parameter will less error and high accuracy. The proposed system is implemented using MATLAB and its performance is compared with the support vector machine and ANN in terms of mean square error and accuracy. The proposed technique out-performs the conventional technique and suggest that the k-nearest neighbour become the most suitable technique for the modelling and performance analysis of automatic AC system.
Databáze: OpenAIRE