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Full Description
This book features a collection of high-quality and peer-reviewed papers from 2025 16th International Conference on Environmental Science and Technology, which was held in Tokyo, Japan, during November 22-24, 2025. The ICEST 2025 is the 16th Annual Conference in this series of scientific events to advancing research and innovation in environmental science and technology. It is designed for scholars and scientists in environmental science, engineers, consultants, and practitioners working on environmental solutions and decision-makers shaping environmental policies and regulations, etc.
The proceedings features cutting-edge research and advancements in environmental science, sustainability, and technology. Covering topics such as climate change, pollution control, renewable energy, and ecological conservation, the proceedings includes peer-reviewed papers from leading researchers, practitioners, and policymakers worldwide. This book serves as a valuable resource for addressing global environmental challenges and promoting innovative solutions for a sustainable future.
Contents
Enhancing the Environmental Efficiency of Cleaning-in-place (CIP) processes through Swirl-Induced Sinusoidal Cleaning Patterns and Ultrasonic Monitoring.- Phytoremediation of Water Contaminated by an Environmental Liability at the Former Yauris Metallurgical Plant Using Hydrocotyle bonariensis and Nasturtium officinale.- Strategic Epidemic Intelligence through Wastewater: AVMOSA-Based Framework for Coastal Resilience.- Development and pollution in the coastal zone: A review from recent literature.- Learnings from the influence of climate change and grid decarbonisation on carbon and beyond carbon impacts of buildings: two residential cases in London.- Effect of CO2 Curing on the Engineering Properties of Mortar Incorporating Recycled Aggregate.- Analysis of Watershed Water Quality Forecasting Performance in the Qinhuai River (QR) basin, China, using Machine Learning Models Coupled with Data-Driven Strategies.- Research and application of multistage series treatment scheme for odor in cigarette factory.



