15 research outputs found
Impact Assessment of Mitigation Strategies in the Hungarian Agriculture
In this paper we assess the domestic mitigation options to mitigate emissions from the agriculture with special regards to potential renewable utilisation based on a UNFCCC assessment’s results. We show that the condition of sustainable long-term production is the establishment and introduction of low-emission production processes .</jats:p
FORECASTING OF DISSOLVED OXYGEN IN THE RIVER DANUBE USING NEURAL NETWORKS
The Danube is the second-largest river in Europe and the
conservation of its water quality is very important because it
influences the lives of millions people. The aim of this research is to predict one of the most important water quality parameters, dissolved oxygen, with the help of water pH, runoff, water temperature and electrical conductivity data. Multivariate Linear Regression (MLR), Back-propagation Neural Networks (BPNN) and General Regression Neural Networks (GRNN) were applied and their performances compared in this study. The most accurate prediction proved to be GRNN. This paper describes the influence of single input parameters on the prediction