System monitoring can help to detect abnormalities and avoid failures. Crafting monitors for today’s robotic systems, however, can be very difficult due to the systems ’ inherent complexity and its rich operating environment. In this work we address this challenge through an approach that automatically infers system invariants and synthesizes those invariants into monitors. This approach is inspired by existing software engineering approaches for automated invariant inference, and it is novel in that it derives invariants by observing the messages passed between system nodes and the invariants types are tailored to match the spatial, time, temporal, and architectural attributes of robotic systems. Further, our approach automatically classif...
Invariants monitoring is a software attestation technique that aims at proving the integrity of a ru...
This work presents the preliminary research towards developing an adaptive tool for fault detection ...
This paper presents the application of a Bayesian nonparametric time-series model to process monitor...
System monitoring can help to detect abnormalities and avoid failures. Crafting monitors for today’s...
System monitoring can help to detect abnormalities and avoid failures. Crafting monitors for today’s...
This work explains the use of invariants in robotic perception and control skills. An 'invariant' is...
Invariants are stable relationships among system metrics expected to hold during normal operating co...
Autonomous Systems are systems situated in some environment and are able of taking decision autonomo...
Monitoring gains importance for many technical systems such as robots, production lines or anti lo...
Autonomous systems are usually equipped with sensors to sense the surrounding environment. The senso...
Future robots are expected to operate in unpredictable and changing environments, not only in indust...
AbstractWe propose a new methodology for automated testing of real-time applications in general and ...
Dynamic invariant detection is the process of distilling invariants from information about a program...
It is notoriously hard to develop dependable distributed systems. This is partly due to the difficul...
We present a technique designed to automatically compute predicate abstractions for dense real-timed...
Invariants monitoring is a software attestation technique that aims at proving the integrity of a ru...
This work presents the preliminary research towards developing an adaptive tool for fault detection ...
This paper presents the application of a Bayesian nonparametric time-series model to process monitor...
System monitoring can help to detect abnormalities and avoid failures. Crafting monitors for today’s...
System monitoring can help to detect abnormalities and avoid failures. Crafting monitors for today’s...
This work explains the use of invariants in robotic perception and control skills. An 'invariant' is...
Invariants are stable relationships among system metrics expected to hold during normal operating co...
Autonomous Systems are systems situated in some environment and are able of taking decision autonomo...
Monitoring gains importance for many technical systems such as robots, production lines or anti lo...
Autonomous systems are usually equipped with sensors to sense the surrounding environment. The senso...
Future robots are expected to operate in unpredictable and changing environments, not only in indust...
AbstractWe propose a new methodology for automated testing of real-time applications in general and ...
Dynamic invariant detection is the process of distilling invariants from information about a program...
It is notoriously hard to develop dependable distributed systems. This is partly due to the difficul...
We present a technique designed to automatically compute predicate abstractions for dense real-timed...
Invariants monitoring is a software attestation technique that aims at proving the integrity of a ru...
This work presents the preliminary research towards developing an adaptive tool for fault detection ...
This paper presents the application of a Bayesian nonparametric time-series model to process monitor...