Periodic Reporting for period 4 - ROMEO (Reliable OM decision tools and strategies for high LCoE reduction on Offshore wind)
Período documentado: 2021-06-01 hasta 2022-05-31
The project is structured in 3 phases:
- 1. “Specifications” has defined the specifications and requirements to develop a monitoring strategy for the most relevant and critical components to be further considered
- 2. “Models/tools/database” has developed health monitoring systems, diagnosis and prognosis tools for failure detection both at WT components and support structures level, feeding the development of a data acquisition and advanced analytics ecosystem
- 3. “O&M/rollout” has developed and deployed an O&M platform validated in 3 pilot scenarios; the data has served as input for impact assessment with a special focus on LCoE and replicability.
ROMEO’s successful implementation has led to achieve the following overall objectives:
-Reduction of unexpected major correctives through early fault identification, in WTG and substructure;
-Improved performance for new and operating offshore wind power plants and improved cost of energy;
-Contribution to strengthening the European industrial technology base, thereby creating growth and jobs in Europe;
-Contribute to health and safety in the Wind industry;
-Generating synergies in the field of O&M strategies with Onshore wind sector;
-Laying the foundation to place on the market a set of new products and services.
- Requirements have been defined as a solid roadmap and the potential failure modes that apply for predictive maintenance have been identified according to their criticality. 337 failure modes have been identified out of which the 120 most critical have been investigated towards applicability of monitoring systems;
- All expected algorithms of diagnosis and prognosis related to drive train, blade bearing and electrical equipment have been successfully implemented and validated. Portability has been developed were applicable;
- Physical models for the diagnosis and prognosis of critical failure modes for platforms AD5-135 to Wikinger (13 models) and for SWT 2.3 93 to Teesside (5 models) have been developed and tested. Machine Learning (ML) models have been developed and tested for all these physical models;
- The partners completed 2 temporary measuring campaigns on Wikinger substation and one jacket foundations, finished the Finite Element (FE) models for Wind Turbines (WT) and jacket substructure, completed t load interactions and set off for low-cost monitoring methods for the WT jackets as main results achieved; Low cost monitoring methods for damage detection and fatigue have been developed.
- The 3 ICT architectures of the WFs have been finalized. A full connection with the IBM Cloud ecosystem was reached, establishing IBM Cloud components, gateways and secure connections; Models have been hosted on the cloud and ran providing result to the O&M tool.
- New concepts have been developed for monitoring and analytics functionalities, as well as advisory generation on the O&M information and management tool. This novel approach required to create digital twins of WTs, establish an asset management framework and provide a knowledge base and a reasoning process. A visualization platform based on VR has been developed to show results from the foundations models.
- Node#1 Gateway, including Alert algorithm, has been deployed on East Anglia One Onshore substation. Connections for visualization to internal information systems have been developed.
- An impact assessment tool has been developed, including modules for cost and power production assessment but also for environmental impact assessment. Its modular form structured in 5 modules of the numerical tool enables focused research to take place in order to evaluate the effect of modelling uncertainties to the assessment of the KPIs; The analysis of project results has shown very good O&M costs reduction and LCOE reduction figures.
- 21 Business models have been elaborated for results with exploitation potential. 3 training pills blocks have been created and put at disposal of industry and Academy. 2 dissemination videos and 2 factsheets have been prepared showing main project results.
- 3rd generation of WTG components Condition Monitoring technologies;
- Data driven models for early fault detection, diagnosis and prognosis;
- Advanced low-cost monitoring techniques at WTG substructure level for damage detection and fatigue;
- Extreme Transaction and Processing Architectures for data acquisition and analytics ecosystem;
- Deployment of on-edge computing system
- Ensuring proper integration of multiple data streams in O&M Information Management;
- Smart and advanced wind farm O&M strategies;
- Innovative cost models to improve LCoE and provide replicability strategies.
21 project results count on relevant potential to become future ground-breaking products and services. Impacts and results achieved as a result of the project’s progress beyond the SoA:
- Component failure reduction and increased reliability;
- The development of innovative solutions and tools will allow to create more reliable wind turbines and plants;
- Significant contribution to an improved performance for new and operating offshore wind power plants and therefore to the cost of energy;
- Project’s tools and solutions will have exploitation potential in the onshore wind sector;
- Contribution to strengthen the European industrial technology base, creating growth and jobs;
- Contribution to health and safety in the Wind industry;
- Impact to substructure and soil monitoring by fatigue and damage detection models.