How to leverage AI to benchmark your industrial assets
In this webinar, we will go into on how to leverage data to reliably benchmark asset performance of several similar machines. Methods will be presented to compare assets in terms of operational performance, advantages and disadvantages will be explained in detail, as well as the most important data characteristics and parameters to take into account.
Many companies operate a multitude of (nearly identical) machines, such as wind turbines, compressors or professional vehicles, and are able to continuously monitor the operation of these machines thanks to ever-ongoing evolutions in sensor, communication and data storage technologies. The ability to compare an asset against its peers makes it possible to better distinguish the physical performance and characteristics of the asset from the influence of its operational environment, allowing for identification of underperformance, misconfigurations, and impending failures. Companies able to fully leverage the capabilities of data analytics can achieve better actionable insights and significant operational efficiency improvements.
In this webinar, we will zoom in on how to leverage data to reliably benchmark asset performance. Several methods will be presented to compare assets in terms of operational performance, for which their main advantages and disadvantages will be explained in detail, as well as the most important data characteristics and parameters to take into account. The techniques will be illustrated by real-world industrial case studies, showing how the methods can be used to highlight performance trends, detect underperforming assets and identify anomalous operating behaviour.
The working language for this webinar is English.
275 EUR (exclusive of VAT)
If you are a Flemish SME you can also make use of the kmo-portefeuille (the kmo-portefeuille should be requested at latest 14 days after the seminar has taken place - if not, your application will be refused). (Sirris accreditation no: DV.O105154).
- Invoices will be sent after the event. You can consult our general conditions on our website.
- If you are unable to attend, you can be replaced by a colleague. Please notify us by email to email@example.com of the name of your colleague.
- Cancellations must be made by email to firstname.lastname@example.org. You can cancel your participation free of charge up to 3 working days before the event. In case of cancellation after this date or non-participance without cancellation, you will be invoiced for the full participation fee.