This paper introduces a groundbreaking approach to revolutionize traditional farming practices by introducing a decision model-based agricultural electrical automation control system. The system integrates cutting-edge technologies, including artificial intelligence (AI), machine learning (ML), and sensor networks, with the goal of enhancing the efficiency and productivity of agricultural processes. By automating key tasks such as irrigation, fertilization, pest control, and harvesting, the system optimizes the utilization of resources, ultimately leading to improved crop yield and sustainable food production.The core of this innovative system lies in the development of a sophisticated decision model. This model incorporates AI and ML algorithms to analyze real-time field data collected from sensors placed strategically throughout the agricultural area. By processing and interpreting this data, the decision model empowers farmers to make informed choices based on accurate and timely information. It provides actionable insights and recommendations, allowing farmers to optimize their decision-making process and implement precise actions tailored to specific crop requirements.The implementation of the decision model-based agricultural electrical automation control system holds significant potential across diverse agricultural settings. It offers a flexible and adaptable framework that can be customized to meet the unique needs of different crops, climates, and farming practices. Whether applied in large-scale commercial farms or small-scale local operations, the system provides valuable support in streamlining agricultural operations, reducing manual labor, and maximizing resource efficiency.The introduction of this system brings numerous benefits to the farming industry. Firstly, it significantly enhances operational efficiency by automating time-consuming and labor-intensive tasks. With automated irrigation and fertilization, for example, farmers can ensure precise and optimal application of water and nutrients, resulting in improved plant health and productivity. Additionally, the system's advanced pest control mechanisms help mitigate crop damage, leading to increased yield and reduced losses.Moreover, the decision model-based agricultural electrical automation control system promotes sustainable agricultural practices. By optimizing resource utilization, such as water and fertilizers, it minimizes waste and reduces environmental impact. The system enables farmers to implement precision agriculture techniques, matching inputs with the specific needs of crops, reducing chemical usage, and enhancing overall sustainability.The implementation of this system represents a significant step towards transforming the farming industry.
Waheed, S. (2023). A decision model-based agricultural electrical automation control system. Afribary. Retrieved from https://track.afribary.com/works/a-decision-model-based-agricultural-electrical-automation-control-system
Waheed, Sameer "A decision model-based agricultural electrical automation control system" Afribary. Afribary, 18 Jun. 2023, https://track.afribary.com/works/a-decision-model-based-agricultural-electrical-automation-control-system. Accessed 19 Nov. 2024.
Waheed, Sameer . "A decision model-based agricultural electrical automation control system". Afribary, Afribary, 18 Jun. 2023. Web. 19 Nov. 2024. < https://track.afribary.com/works/a-decision-model-based-agricultural-electrical-automation-control-system >.
Waheed, Sameer . "A decision model-based agricultural electrical automation control system" Afribary (2023). Accessed November 19, 2024. https://track.afribary.com/works/a-decision-model-based-agricultural-electrical-automation-control-system