Real-Time Monitoring and Diagnosis of Environmental Protection Systems by Artificial Neural Networks Case study: Pharmaceutical Isolator
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Date
2023
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ALJEST
Abstract
: The main objective of this work is the study of risk analysis,
in the field of pharmaceutical production. Some dangers can affect
pharmaceutical companies’ personnel, as well as their internal and
external environment, during the manufacturing process.
Furthermore, the current regulations that governs this very sensitive
field of manufacturing and the standards which are scrupulously very
sharp. Also see the technical complexity of the industrial systems
implemented. These three parameters constitute a real problem to be
solved. To do this, we have developed an intelligent technique for
monitoring these protection systems, in real time, in order to protect
the personnel and the environment. This technique is mainly based on
the use of an artificial neural network (ANN) which detects and
localizes any anomalies that may occur at any time in the protection
system. The experiment was carried out on an isolator belonging to
BEKER Laboratories (a medecine manufacturing and development
company in Dar El Beida-Algers). The test results allowed us to define
the good and bad areas of the isolator operation. We concluded that,
it is possible to define defaults in real time, using our new technique
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Keywords
Pharmaceutical isolator, Artificial intelligence, Neural networks, Industrial diagnosis, Failure tree analysis
