Abstract

Abstract. This article describes a method of determination potentially dangerous objects, that could be involved in pollution based on the specified riverbed monitoring point. A way to solve the problem is considered through the filtration and sorting potentially dangerous objects list algorithm, which applies facts database, that allows to determine a possible rived bed potentially dangerous objects list. There are a number on software models and methods, which allows to determine an approximate or exact rived pollutant spill point in case of determining dangerous and/or rising pollutant concentration level from below downstream. Such methods work by forecasting the situation, or direct analysis of the natural environment. These methods make it possible to find the point of toxic substances spillage on the riverbed. However, it is not possible to find the enterprise/factory that made such an emission. Such problem mostly solved using analytical way. A method, which allows to determine a possible list of riverbed pollution potentially dangerous objects has been developed. Current development validation is a series of test checks and simulations that show the correctness of the neural network. A practical realization is implementation of the river pollution forecasting system in emergency situations informational system, to make a functionality, that determines a possible polluting object list based on the selected point of release of hazardous substances. Method can also be used with methods that allow to determine an approximate or exact rived pollutant spill point to find the enterprise/factory that made such an emission.

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