11th Nov 2024 18:00 hours
Stephenson Building, Newcastle University, Newcastle upon Tyne NE1 7RU
This event is hosted by the Northern Geotechnical Group (NGG).
This event is planned as an in-person event.
Advance booking is required, via the button below.
Photographs may be taken at the event and used for BGA promotional purposes; if you have any objections please contact the BGA via email.
The Touring Lecture was established by the British Geotechnical Society (the predecessor to the BGA) in the 1980s to provide support to Regional Geotechnical Groups in the UK by bringing eminent geotechnical professionals from overseas to deliver a lecture on their particular expertise. The Lecture is biennial and is held at three venues around the country.
Dates of BGA Touring Lecture 2024:
Monday 11th November 2024 – Newcastle, Hosted by the Northern Geotechnical Group (NGG)
Tuesday 12th November 2024 – Birmingham, Hosted by the Midlands Geotechnical Society (MGS). Details HERE.
Wednesday 13th November 2024 – Bristol, Hosted by the BGA Southwestern Group (BGA SW): Details HERE.
During geotechnical and geophysical site characterisation for large infrastructure projects, significant data volumes are being collected which need to be processed and interpreted. Moreover, the feedback from foundation construction (e.g. pile driving) provides valuable feedback on the actual ground conditions at the site. Due to the limited budgets available for site characterisation and the various sources of uncertainty, the interpretation of ground investigation data and installation records relies on a combination of data from various sources (e.g. in-situ test, laboratory tests and pile load testing), the use of parameter correlations from the literature and expert judgement.
In recent years, modern data science techniques have become increasingly accessible to practicing engineers and researchers and they offer the possibility to improve several aspects of the site characterisation and foundation design process. Machine learning models can be trained on high-quality datasets and expert judgement can also be internalised in the model formulations. In this contribution, the role of data science and machine learning for geotechnical site characterisation and design is discussed based on several example applications using datasets from offshore wind farm projects. The role of data coverage and data quality is discussed as well as the role of geophysical data for interpolating geotechnical point measurements in a quantitative way. Supervised and unsupervised machine learning techniques are explained and illustrated on the provided datasets. The lecture aims to provide engineers an insight into the applicability of machine learning in their daily practice and on the potential issues which may arise when using these methods.
After working in offshore geotechnical consultancy for more than 10 years, Bruno was appointed as Visiting Professor for Offshore Geotechnics at the Geotechnical Laboratory of UGent in 2019. In parallel, he took up a research position at OWI-Lab (VUB/UGent). He is responsible for the Offshore Foundations course and supports the other geotechnical courses in the curriculum. His research interests include geotechnical data management, farm-wide back-analysis of soil structure interaction, the application of data-driven methods to geotechnical design and probabilistic methods.