PORTALE DELLA DIDATTICA

PORTALE DELLA DIDATTICA

PORTALE DELLA DIDATTICA

Elenco notifiche



Fundamentals of data analysis for energy systems

01SMZIV

A.A. 2024/25

Course Language

Inglese

Degree programme(s)

Doctorate Research in Energetica - Torino

Course structure
Teaching Hours
Lezioni 10
Lecturers
Teacher Status SSD h.Les h.Ex h.Lab h.Tut Years teaching
Noussan Michel   Ricercatore a tempo det. L.240/10 art.24-B IIND-06/B 10 0 0 0 1
Co-lectures
Espandi

Context
SSD CFU Activities Area context
*** N/A ***    
The aim of this course is to provide the PhD students with a background on the main aspects of data analysis to support their activities on energy systems. The course will describe the main techniques and concepts, with a methodological framework and case studies and examples of applications to different energy systems. The course will also cover how to communicate the results, with particular attention to data visualization. The students will learn how to apply the concepts to real cases by using open-source tools and resources, such as R and python.¿
The aim of this course is to provide the PhD students with a background on the main aspects of data analysis to support their activities on energy systems. The course will describe the main techniques and concepts, with a methodological framework and case studies and examples of applications to different energy systems. The course will also cover how to communicate the results, with particular attention to data visualization. The students will learn how to apply the concepts to real cases by using open-source tools and resources, such as R and python.¿
A basic knowledge of energy systems is preferred
A basic knowledge of energy systems is preferred
Introduction to data analysis: objectives, strategies, techniques, limitations.¿ Data acquisition and manipulation, application to datasets related to energy monitoring and weather conditions.¿ Descriptive analysis of a dataset, main statistical summaries, techniques to manage missing data and outliers, large datasets.¿ Time series: discretization, gap filling, comparison of different time resolutions.¿ Data visualization: types of charts, main rules, how to choose the right chart to convey the message of the analysis. Quick introduction to geospatial data and maps.¿ Open data and FAIR data principles: data should be findable, accessible, interoperable and reusable.¿ Case studies on energy systems of different types and at different scales.¿
Introduction to data analysis: objectives, strategies, techniques, limitations.¿ Data acquisition and manipulation, application to datasets related to energy monitoring and weather conditions.¿ Descriptive analysis of a dataset, main statistical summaries, techniques to manage missing data and outliers, large datasets.¿ Time series: discretization, gap filling, comparison of different time resolutions.¿ Data visualization: types of charts, main rules, how to choose the right chart to convey the message of the analysis. Quick introduction to geospatial data and maps.¿ Open data and FAIR data principles: data should be findable, accessible, interoperable and reusable.¿ Case studies on energy systems of different types and at different scales.¿
In presenza
On site
Presentazione report scritto
Written report presentation
P.D.1-1 - Febbraio
P.D.1-1 - February
Monday 10/02/2025 h 14:30-17:30, Thursday 13/02/2025 h 14:30-17:30, Monday 17/02/2025 h 14:30-18:30.
Monday 10/02/2025 h 14:30-17:30, Thursday 13/02/2025 h 14:30-17:30, Monday 17/02/2025 h 14:30-18:30.