After a one-year long effort of research on the field, we developed a machine learning-based classifier, tailored to predict whether a mechanical water meter would fail with passage of time and intensive use as well. A recurrent deep neural network (RNN) was trained with data extrapolated from 15 million readings of water consumption, gathered from 1 million meters. The data we used for training were essentially of two types: continuous vs categorical. Categorical being a type of data that can take on one of a limited and fixed number of possible values, on the basis of some qualitative property; while continuous, in this case, are the values of the measurements. taken at the meters, of the quantity of consumed water (cubic meters)...
Drinking water networks are among the essential infrastructure in cities worldwide. The failure of w...
In this dissertation I study the benefits that machine learning can bring to problems of Sustainable...
This study evaluated the potential for data from dedicated water sub-meters and circuit-level electr...
After a one-year long effort of research on the field, we developed a machine learning-based classi...
none4noFurther to an experiment conducted with a deep learning (DL) model, tailored to predict wheth...
In this paper, we describe the design of a machine learning-based classifier, tailored to predict wh...
Take an AI learning algorithm and a human trainer with an experience in machine intelligence. Take p...
none5noMany data scientists are currently pointing out that the amount of Machine Learning (ML) rese...
Supervised Machine Learning (ML) requires that smart algorithms scrutinize a very large number of la...
Purpose: This study describes the trends and applications of machine learning systems in the managem...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
In the last years, many European countries have experienced the effects of climate change, in the fo...
We are surrounded by data in our daily lives. The rent of our houses, the amount of electricity unit...
Water utilities in the UK collect vast amounts of water quality data during their monitoring program...
Technological advances in computer science, namely cloud computing and data mining, are reshaping th...
Drinking water networks are among the essential infrastructure in cities worldwide. The failure of w...
In this dissertation I study the benefits that machine learning can bring to problems of Sustainable...
This study evaluated the potential for data from dedicated water sub-meters and circuit-level electr...
After a one-year long effort of research on the field, we developed a machine learning-based classi...
none4noFurther to an experiment conducted with a deep learning (DL) model, tailored to predict wheth...
In this paper, we describe the design of a machine learning-based classifier, tailored to predict wh...
Take an AI learning algorithm and a human trainer with an experience in machine intelligence. Take p...
none5noMany data scientists are currently pointing out that the amount of Machine Learning (ML) rese...
Supervised Machine Learning (ML) requires that smart algorithms scrutinize a very large number of la...
Purpose: This study describes the trends and applications of machine learning systems in the managem...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
In the last years, many European countries have experienced the effects of climate change, in the fo...
We are surrounded by data in our daily lives. The rent of our houses, the amount of electricity unit...
Water utilities in the UK collect vast amounts of water quality data during their monitoring program...
Technological advances in computer science, namely cloud computing and data mining, are reshaping th...
Drinking water networks are among the essential infrastructure in cities worldwide. The failure of w...
In this dissertation I study the benefits that machine learning can bring to problems of Sustainable...
This study evaluated the potential for data from dedicated water sub-meters and circuit-level electr...