FN Archimer Export Format PT J TI Deep Learning Approach for Forecasting Water Quality in IoT Systems BT AF Thai-Nghe, Nguyen Thanh-Hai, Nguyen Chi Ngon, Nguyen AS 1:1;2:1;3:1; FF 1:;2:;3:; C1 College of ICT Can Tho University Can Tho City, Vietnam C2 UNIV CAN THO, VIETNAM TC 0 UR https://archimer.ifremer.fr/doc/00646/75836/76830.pdf LA English DT Article DE ;Forecasting model;deep learning;Long-Short Term Memory (LSTM);water quality indicators AB Global climate change and water pollution effects have caused many problems to the farmers in fish/shrimp raising, for example, the shrimps/fishes had early died before harvest. How to monitor and manage quality of the water to help the farmers tackling this problem is very necessary. Water quality monitoring is important when developing IoT systems, especially for aquaculture and fisheries. By monitoring the real-time sensor data indicators (such as indicators of salinity, temperature, pH, and dissolved oxygen - DO) and forecasting them to get early warning, we can manage the quality of the water, thus collecting both quality and quantity in shrimp/fish raising. In this work, we introduce an architecture with a forecasting model for the IoT systems to monitor water quality in aquaculture and fisheries. Since these indicators are collected every day, they becomes sequential/time series data, we propose to use deep learning with Long-Short Term Memory (LSTM) algorithm for forecasting these indicators. Experimental results on several data sets show that the proposed approach works well and can be applied for the real systems PY 2020 SO International Journal of Advanced Computer Science and Applications SN 2156-5570 PU IJACSA VL 11 IS 8 BP 686 EP 693 ID 75836 ER EF