A Result Verification of Decision Tree Model for Industrial Wireless Sensors Selection using Analytic Hierarchy Process

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Meesawad, Saksiri, Thanasopon, Bundit and Wongwirat, Olarn (2019) A Result Verification of Decision Tree Model for Industrial Wireless Sensors Selection using Analytic Hierarchy Process In: 2019 16th International Joint Conference on Computer Science and Software Engineering (JCSSE), 2019-07-10, Chonburi, Thailand.

Abstract

Nowadays, an industrial wireless sensor (IWS) is interested and widely used in a Gas industry in Thailand. There are many vendors trying to improve quality of IWS products for gaining advantage in competitive market. Therefore, choosing the IWS becomes a challenge for users not only the brand name and price but also several factors needed to be considered, e.g., data rate, output power, operating voltage, transmitting current, receiving current, and operating temperature. Selecting the proper IWS is considered as a multi-objective decision problem that is complicated for an engineer and a project manager. The classification method using a Decision Tree)DT(model can be applied to solve such the problem, but the accuracy is depended on the number of historical data. For IWS in the Gas industry in Thailand, not only the number of training and testing data is limited but also there are only a few brands that are chosen regularly. In this paper, the method of applying the DT model for IWS classification and selection is presented. Then, the classification result of the DT model is verified by using an Analytic Hierarchy Process)AHP(for confirming whether it is accurate based on the limit number of historical data. The verification result can be preliminarily ensured that the DT model can be applied as a decision tool for choosing the appropriate IWS accurately.

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Conference or Workshop Item (Paper)

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Deposited by:

ระบบ อัตโนมัติ

Date Deposited:

2021-09-09 23:53:44

Last Modified:

2021-09-21 05:39:07

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