International Journal of BIM and Engineering Science IJBES 2571-1075 10.54216/IJBES https://www.americaspg.com/journals/show/3333 2021 2021 Machine Learning-Enhanced Wireless Sensor Networks for Real-Time Environmental Monitoring Senior Manager,TVR Consulting Services Private Limited, Gajularamaram, Medchal Malkangiri district, Hyderabad - 500055, Telegana, India Tatiraju Tatiraju Associate Professor, Department of Electrical and Electronics Engineering KIT-Kalaignarkarunanidhi Institute of Technology, Coimbatore, India K. Dhineshkumar Department: Artificial Intelligence and Machine Learning College: Sagar Institute of Research & Technology, Bhopal, India Haritima Mishra Professor, Department of ECE, Siddartha Institute of Science and Tech, Puttur, Andhra Pradesh, 51758, India Chandra Sekar. P. Wireless Sensor Networks (WSNs) are pivotal for real-time environmental monitoring, providing valuable data on variables like temperature, humidity, and pollution levels. However, ensuring timely and accurate data transmission and analysis remains a challenge due to resource constraints in WSNs. This study introduces a machine learning-enhanced WSN framework that leverages predictive algorithms for efficient data processing and anomaly detection in real time. By integrating machine learning models, the system can predict environmental trends, detect sensor faults, and identify unusual events, improving data reliability and reducing network load. Experimental evaluations in a simulated environment show a 40% improvement in anomaly detection accuracy and a 35% reduction in data redundancy. Furthermore, this framework achieved a 25% increase in energy efficiency, enhancing network longevity. This machine learning-optimized WSN framework provides an effective solution for continuous environmental monitoring in applications such as wildlife tracking, pollution control, and smart agriculture. 2025 2025 18 25 10.54216/IJBES.100103 https://www.americaspg.com/articleinfo/22/show/3333