peer reviewedIn this paper, a temporal machine learning method is presented which is able to automatically construct rules allowing to detect as soon as possible an event using past and present measurements made on a complex system. This method can take as inputs dynamic scenarios directly described by temporal variables and provides easily readable results in the form of detection trees. The application of this method is discussed in the context of switching control. Switching (or discrete event) control of continuous systems consists in changing the structure of a system in such a way as to contreol its behavior. Given a particular discrete control switch, detection trees are applied to the induction of rules which decide based on the ava...
Online identification of post-contingency transient stability is essential in power system control, ...
in Computer Science There has been recent interest in using a class of incremental learning algorith...
In this paper we present a new method for temporal knowledge conversion, called TCon. The main aim o...
peer reviewedThis paper discusses the application of machine learning to the design of power system ...
AbstractIn this paper, a new method for the detection of switching time is proposed for discrete-tim...
The problem of constructing and expanding the temporal knowledge base for the information-control sy...
Temporal network, whose topology evolves with time, is an important class of complex networks. Tempo...
In a multimode industrial control system, mode switching decisions have to follow standard operating...
International audienceIndustrial plant safety involves integrated management of all the factors that...
Recently, formal methods have gained significant traction for describing, checking, and synthesizing...
Nowadays, disruption predictors, based on machine learning techniques, can perform well but they typ...
Temporal networks are data structures for representing and reasoning about temporal constraints on a...
This work employs machine learning methods to develop and test a technique for dynamic stability ana...
peer reviewedIn this paper we propose a methodology based on supervised automatic learning in order ...
This paper presents an inference algorithm that can discover temporal logic properties of a system f...
Online identification of post-contingency transient stability is essential in power system control, ...
in Computer Science There has been recent interest in using a class of incremental learning algorith...
In this paper we present a new method for temporal knowledge conversion, called TCon. The main aim o...
peer reviewedThis paper discusses the application of machine learning to the design of power system ...
AbstractIn this paper, a new method for the detection of switching time is proposed for discrete-tim...
The problem of constructing and expanding the temporal knowledge base for the information-control sy...
Temporal network, whose topology evolves with time, is an important class of complex networks. Tempo...
In a multimode industrial control system, mode switching decisions have to follow standard operating...
International audienceIndustrial plant safety involves integrated management of all the factors that...
Recently, formal methods have gained significant traction for describing, checking, and synthesizing...
Nowadays, disruption predictors, based on machine learning techniques, can perform well but they typ...
Temporal networks are data structures for representing and reasoning about temporal constraints on a...
This work employs machine learning methods to develop and test a technique for dynamic stability ana...
peer reviewedIn this paper we propose a methodology based on supervised automatic learning in order ...
This paper presents an inference algorithm that can discover temporal logic properties of a system f...
Online identification of post-contingency transient stability is essential in power system control, ...
in Computer Science There has been recent interest in using a class of incremental learning algorith...
In this paper we present a new method for temporal knowledge conversion, called TCon. The main aim o...