3 research outputs found
Development and Evaluation of an Expert System for Diagnosing Kidney Diseases
This research paper presents the development and evaluation of an expert system for diagnosing kidney diseases. The expert system utilizes a decision-making tree approach and is implemented using the CLIPS and Delphi frameworks. The system's accuracy in diagnosing kidney diseases and user satisfaction were evaluated. The results demonstrate the effectiveness of the expert system in providing accurate diagnoses and high user satisfactio
Development and Evaluation of an Expert System for Diagnosing Tinnitus Disease
Tinnitus is a common condition characterized by the perception of sound in the absence of an external source, with potential negative physical and psychological impacts. Accurate and efficient diagnosis of tinnitus is crucial for appropriate treatment and management. Traditional diagnostic methods have limitations in terms of time, cost, and accuracy. To address these challenges, expert systems have emerged as a promising tool for tinnitus diagnosis. This paper explores the application of expert systems in tinnitus diagnosis, highlighting their potential to improve accuracy and efficiency. By incorporating a knowledge base and rule-based decision-making, expert systems can provide valuable insights for accurate diagnosis and appropriate management of tinnitus. Further research and development in this area can enhance the clinical assessment and treatment of tinnitus, ultimately improving the quality of life for affected individuals
AI-Driven Innovations in Agriculture: Transforming Farming Practices and Outcomes
Abstract: Artificial Intelligence (AI) is transforming the agricultural sector, enhancing both productivity and sustainability. This
paper delves into the impact of AI technologies on agriculture, emphasizing their application in precision farming, predictive
analytics, and automation. AI-driven tools facilitate more efficient crop and resource management, leading to higher yields and a
reduced environmental footprint. The paper explores key AI technologies, such as machine learning algorithms for crop monitoring,
robotics for automated planting and harvesting, and data analytics for optimizing resource use. Additionally, it discusses challenges
like data privacy, barriers to technology adoption, and the ethical implications of AI in farming. Integrating AI into agricultural
practices holds the promise of greater efficiency and sustainability, paving the way for future innovations