What is it about?

Application of multiple neural networks (MNN) in predicting WQI in Malaysia

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Why is it important?

Highly dynamics input for WQI and MNN is able to dealt with it and able to predict the WQI accurately. It can become a platform for monitoring using cloud etc .

Perspectives

Dealing with real data is not that easy as compared to secondary data which is less noise etc as compare to real one. However MNN is able to dealt with noise in the measurement as well as dealt with highly correlated input data to predict the WQI accurately. This approach can be extended to other monitoring as well like API water discharge etc.

Dr Zainal Ahmad
Universiti Sains Malaysia

Read the Original

This page is a summary of: Improving water quality index prediction in Perak River basin Malaysia through a combination of multiple neural networks, International Journal of River Basin Management, November 2016, Taylor & Francis,
DOI: 10.1080/15715124.2016.1256297.
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