Siti Nurul Iman Mahamud’s scientific contributions

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Publications (2)


Figure 2. Graphical representation based on the fuzzy rule for (a) pH, (b) temperature, (c) electrica conductivity (EC), and (d) oxidation reduction potential (ORP) for tap water. (e) The water quality graph shows that the sample is in adequate condition. NA, ADE and HACC refer to Not Acceptable Adequate, and Highly Acceptable respectively.
The parameter ranges for safe water based on three different membership functions (MFs) of fuzzy logic [13,40,41]. NA, ADE and HACC refer to Not Acceptable, Adequate, and Highly Acceptable respectively.
The average reading of sensors for four types of water in terms of potential hydrogen (pH), temperature, Electrical Conductivity (EC) and Oxidation-Reduction Potential (ORP).
Decision support on water quality for each sample based on pH, temperature, ORP, and EC. Three membership functions (MFs) such as Not Acceptable (NA), Adequate (ADE), and Highly Acceptable (HACC) are applied.
Decision support in terms of Not Acceptable (NA), Adequate (ADE), and Highly Acceptable (HACC) on overall water quality for each sample.
Integration of Sensing Framework with A Decision Support System for Monitoring Water Quality in Agriculture
  • Article
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April 2023

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125 Reads

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7 Citations

Siti Nadhirah Zainurin

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Siti Nurul Iman Mahamud

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Water is an essential element for every plant to survive, absorb nutrients, and perform photosynthesis and respiration. If water is polluted, plant growth can be truncated. The aim of this research is to develop a water quality monitoring system for agriculture purposes based on integration of sensing framework with a smart decision support method. This research consists of three stages: (1) the first stage: developing sensing framework which has four different water quality parameter sensors such as potential hydrogen (pH), electrical conductivity (EC), temperature, and oxidation-reduction potential (ORP), (2) the second stage: developing a hardware platform that uses an Arduino for sensor array of data processing and acquisition, and finally (3) the third stage: developing soft computing framework for decision support which uses python applications and fuzzy logic. The system was tested using water from many sources such as rivers, lakes, tap water, and filtered machine. Filtered water shows the highest value of pH as the filtered machine produces alkaline water, whereas tap water shows the highest value of temperature because the water is trapped in a polyvinyl chloride (PVC) pipe. Lake water depicts the highest value of EC due to the highest amount of total suspended solids (TSS) in the water, whereas river water shows the highest value of ORP due to the highest amount of dissolved oxygen. The system can display three ranges of water quality: not acceptable (NA), adequate (ADE) and highly acceptable (HACC) ranges from 0 to 9. Filtered water is in HACC condition (ranges 7–9) because all water quality parameters are in highly acceptable ranges. Tap water shows ADE condition (ranges 4–7) because one of the water quality parameters is in adequate ranges. River and lake water depict NA conditions (ranges 0–4) as one of the water quality parameters is in not acceptable ranges. The research outcome shows that filtered water is the most reliable water source for plants due to the absence of dissolved solids and contaminants in the water. Filtered water can improve pH and reduce the risk of plant disease. This research can help farmers to monitor the quality of irrigated water which eventually prevents crop disease, enhances crop growth, and increases crop yield.

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Figure 4. Machine learning (ML) Techniques used the most from 2019-2021 [32]. ANN refers to artificial neural network; RF refers to random forest; MLR refers to multiple linear regression; SVM
Figure 8. Membership function (MF) plots based on fuzzy rule for water quality parameters (a) pH and (b) DO [63].
Cont.
Advancements in Monitoring Water Quality Based on Various Sensing Methods: A Systematic Review

October 2022

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2,525 Reads

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70 Citations

Nowadays, water pollution has become a global issue affecting most countries in the world. Water quality should be monitored to alert authorities on water pollution, so that action can be taken quickly. The objective of the review is to study various conventional and modern methods of monitoring water quality to identify the strengths and weaknesses of the methods. The methods include the Internet of Things (IoT), virtual sensing, cyber-physical system (CPS), and optical techniques. In this review, water quality monitoring systems and process control in several countries, such as New Zealand, China, Serbia, Bangladesh, Malaysia, and India, are discussed. Conventional and modern methods are compared in terms of parameters, complexity, and reliability. Recent methods of water quality monitoring techniques are also reviewed to study any loopholes in modern methods. We found that CPS is suitable for monitoring water quality due to a good combination of physical and computational algorithms. Its embedded sensors, processors, and actuators can be designed to detect and interact with environments. We believe that conventional methods are costly and complex, whereas modern methods are also expensive but simpler with real-time detection. Traditional approaches are more time-consuming and expensive due to the high maintenance of laboratory facilities, involve chemical materials, and are inefficient for on-site monitoring applications. Apart from that, previous monitoring methods have issues in achieving a reliable measurement of water quality parameters in real time. There are still limitations in instruments for detecting pollutants and producing valuable information on water quality. Thus, the review is important in order to compare previous methods and to improve current water quality assessments in terms of reliability and cost-effectiveness.

Citations (2)


... This study utilized Arduino as the primary controller, employing five sensors to measure various physical parameters. Another water quality monitoring system to analyze water from multiple sources including rivers, lakes, tap water, and filtered machine has been developed by integrating a sensing framework with a decision support method applicable in the agricultural sector [76]. The system incorporates four sensors; pH, temperature, ORP, and EC-controlled by an Arduino. ...

Reference:

Detection of Chemical Contaminants in Water for Irrigation Systems: A Systematic Review
Integration of Sensing Framework with A Decision Support System for Monitoring Water Quality in Agriculture

... The toxicity and environmental persistence of heavy metals is exacerbated by their tendency to bioaccumulate and biomagnify in aquatic organisms, leading to significant ecological and health risks [16][17][18]. The detrimental effects of river pollution are well documented; however, it is critical to consider the role of river network topology in managing pollution risks and devising effective management strategies are essential to mitigate the effect of pollution sources to ensure sustainable water resources [19,20]. Rapid urbanization and industrialization have exposed the Jukskei River with large volumes of runoff flooding from different areas from Johannesburg City in South Africa, containing a broad range of toxic substances including heavy metals. ...

Advancements in Monitoring Water Quality Based on Various Sensing Methods: A Systematic Review