The increasing attention devoted to air quality by legislative, scientific, industrial and public sectors has led to the development of different control strategies for the emission level monitoring. In this scenario, Predictive Emission Monitoring System (PEMS) is able to predict emission concentrations thanks to empirical or first principles models fed by real-time process data provided by measurement sensors. It follows that PEMS consistency (and, crucially, its acceptance from regulations-enforcing agencies) strictly depends on input accuracy and that reliable Sensor Validation (SV) strategies are fundamental. In this work, the capability of two different SV techniques, Feed Forward Neural Networks and Locally Weighted Regression, is te...
Statistical learning models have been applied to study the spatial patterns of ambient Nitrogen Diox...
Odour emissions are a global issue that needs to be controlled to prevent negative impacts. Instrume...
Malaysia has experienced public health issues and economic losses due to air pollution problems. As ...
Modeling technologies can provide strong support to existing emission management systems, by means o...
The current compliance networks of automatic air-quality monitoring stations in large urban environm...
Observation of air pollution at high spatio-temporal resolution has become easy with the emergence o...
Soft sensors with real time prediction capabilities appear as a profitable solution for hard-to-meas...
In Waste-Water Treatment Plant (WWTP) automation, "soft" sensors might be used in conjunction with "...
The problems of global warming and air pollution have led to enforcement of stringent constraints by...
Low-cost air quality sensors offer significant potential for enhancing urban air quality networks by...
Nowadays, sensor-based air pollution sensing systems are widely deployed for fine-grained pollution ...
When sensor parameters cannot be directly measured, estimation of their performance can be carried o...
In the European Union, power plants of more than 50 MW (thermal energy) need to comply with the Larg...
Odour emissions are a global issue that needs to be controlled to prevent negative impacts. Instrume...
In this paper, we propose a novel sensor validation architecture, which performs sensor fault detect...
Statistical learning models have been applied to study the spatial patterns of ambient Nitrogen Diox...
Odour emissions are a global issue that needs to be controlled to prevent negative impacts. Instrume...
Malaysia has experienced public health issues and economic losses due to air pollution problems. As ...
Modeling technologies can provide strong support to existing emission management systems, by means o...
The current compliance networks of automatic air-quality monitoring stations in large urban environm...
Observation of air pollution at high spatio-temporal resolution has become easy with the emergence o...
Soft sensors with real time prediction capabilities appear as a profitable solution for hard-to-meas...
In Waste-Water Treatment Plant (WWTP) automation, "soft" sensors might be used in conjunction with "...
The problems of global warming and air pollution have led to enforcement of stringent constraints by...
Low-cost air quality sensors offer significant potential for enhancing urban air quality networks by...
Nowadays, sensor-based air pollution sensing systems are widely deployed for fine-grained pollution ...
When sensor parameters cannot be directly measured, estimation of their performance can be carried o...
In the European Union, power plants of more than 50 MW (thermal energy) need to comply with the Larg...
Odour emissions are a global issue that needs to be controlled to prevent negative impacts. Instrume...
In this paper, we propose a novel sensor validation architecture, which performs sensor fault detect...
Statistical learning models have been applied to study the spatial patterns of ambient Nitrogen Diox...
Odour emissions are a global issue that needs to be controlled to prevent negative impacts. Instrume...
Malaysia has experienced public health issues and economic losses due to air pollution problems. As ...