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Stefano Rinaldi

Researcher at University of Brescia

Publications -  204
Citations -  2885

Stefano Rinaldi is an academic researcher from University of Brescia. The author has contributed to research in topics: Smart grid & Synchronization. The author has an hindex of 27, co-authored 177 publications receiving 2216 citations. Previous affiliations of Stefano Rinaldi include Brescia University.

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Journal ArticleDOI

A Testing Framework for the Monitoring and Performance Analysis of Distributed Energy Systems

TL;DR: A testing framework for the analysis of experimental control strategies of distributed energy systems, based on a service-oriented architecture, that can be easily interconnected to different systems, including renewable generators and storage systems is proposed.
Proceedings ArticleDOI

Evaluation of timestamping uncertainty in a software-based IEEE1588 implementation

TL;DR: An index to evaluate the Timestamping Uncertainty Index (TUI) has been proposed and applied to the test case presented and highlights that the main uncertainty source of a software-only synchronization approach is the timestamp method.
Journal ArticleDOI

The “Smartstone”: using smartphones as a telehealth gateway for senior citizens

TL;DR: The concept of “Smartstone” is introduced, that is the use of a (low-cost) smartphone as a simple, effective, and portable gateway/edge server for mobile healthcare towards cloud and Internet of Things (IoT) applications.
Journal ArticleDOI

A Servo-Clock Model for Chains of Transparent Clocks Affected by Synchronization Period Jitter

TL;DR: This paper proposes an optimal servo-clock in the mean square sense that relies on both a Kalman filter that estimates the clock state difference with respect to the master and a static-state feedback assuring mean square stability even under the effect of significant fluctuations of the synchronization period.
Journal ArticleDOI

Security Assessment of Urban Areas through a GIS-Based Analysis of Lighting Data Generated by IoT Sensors

TL;DR: A local illuminance geographic information system (GIS) mapping at the neighborhood level that can be extended to the urban context and could unveil the need to increase lighting to enhance the perceived safety and security for the citizens and promote a higher quality of life in the smart city.