Machine Learning Model to Predict Potential Fishing Zone
Online Publishing @ NISCAIR
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dc |
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Title Statement |
Machine Learning Model to Predict Potential Fishing Zone |
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Added Entry - Uncontrolled Name |
Mudliar, Swaroop Laxmi Shashank, Sai Chandak, M |
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Uncontrolled Index Term |
Water quality indicators; Satellite-based Automatic Information Systems (S-AIS); Datamining; Potential fishing zone (PFZ) |
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Summary, etc. |
<p style="text-align: justify;"><strong>A key challenge today in aquatic environment conservation is the accurate tracking of the spatial distribution of various human impacts on activities like fishing. In the present paper an approach to identify the potential fishing zones in deep sea waters is developed using Autoregressive Integrated Moving Average(ARIMA) and Random Forest model. A large data set containing Indian fishing vessel track from 2017-2019 was taken as database. In the present paper an approach a methodology was developed to detect and map fishing activities. Validation of the model was done against expert label datasets which showed detection accuracy of 98 percent. Our study represents the first comprehensive approach to detect and Identify Potential fishing zones with the help of two important water quality indicators viz Dissolved Oxygen and Salinity.</strong></p> |
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Publication, Distribution, Etc. |
Journal of Indian Association for Environmental Management (JIAEM) 2019-12-14 13:05:23 |
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Electronic Location and Access |
application/pdf http://op.niscair.res.in/index.php/JIAEM/article/view/30486 |
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Data Source Entry |
Journal of Indian Association for Environmental Management (JIAEM); ##issue.vol## 39, ##issue.no## 1-4 (2019): Journal of Indian Association For Environmental Management (JIAEM) |
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Language Note |
en |
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Terms Governing Use and Reproduction Note |
Except where otherwise noted, the Articles on this site are licensed under Creative Commons License: CC Attribution-Noncommercial-No Derivative Works 2.5 India© 2019. The Council of Scientific & Industrial Research, New Delhi. |
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