Publications by authors named "Benyamin Chahkandi"

Accurately predicting air quality concentrations is a challenging task due to the complex interactions of pollutants and their reliance on nonlinear processes. This study introduces an innovative approach in environmental engineering, employing artificial intelligence techniques to forecast air quality in Semnan, Iran. Comprehensive data on seven different pollutants was initially collected and analyzed.

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Flood events in the Sefidrud River basin have historically caused significant damage to infrastructure, agriculture, and human settlements, highlighting the urgent need for improved flood prediction capabilities. Traditional hydrological models have shown limitations in capturing the complex, non-linear relationships inherent in flood dynamics. This study addresses these challenges by leveraging advanced machine learning techniques to develop more accurate and reliable flood estimation models for the region.

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Article Synopsis
  • - This study introduces an intelligent Decision Support System (DSS) designed to improve groundwater management by linking theoretical concepts to practical applications using advanced data analysis methods.
  • - The research utilizes telemetry data from selected wells to create a database of key groundwater parameters, allowing for statistical analysis that identifies critical thresholds for factors like water pressure and electrical current.
  • - A machine learning model using the Random Forest algorithm enables real-time monitoring and forecasting of well performance, while expert insights from water management professionals enhance the system's effectiveness, leading to optimized and sustainable groundwater management practices.
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Chromium (Cr) pollution caused by the discharge of industrial wastewater into rivers poses a significant threat to the environment, aquatic and human life, as well as agricultural crops irrigated by these rivers. This paper employs artificial intelligence (AI) to introduce a new framework for modeling the fate, transport, and estimation of Cr from its point of discharge into the river until it is absorbed by agricultural products. The framework is demonstrated through its application to the case study River, which serves as the primary water resource for tomato production irrigation in Mashhad city, Iran.

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