SYNERGIC USE OF BLOCKCHAIN AND DEEP LEARNING FOR SPACE DATA
14, June 2019

ESA Open Invitation to Tender AO9907
Open Date: 12/06/2019
Closing Date: 24/07/2019 13:00:00

Status: ISSUED
Reference Nr.: 19.1ET.18
Prog. Ref.: Technology Developme
Budget Ref.: E/0901-01 – Technology Developme
Special Prov.: BE+DK+FR+DE+IT+NL+ES+SE+CH+GB+IE+AT+NO+FI+PT+GR+LU+CZ+RO+PL+EE+HU
Tender Type: C
Price Range: 200-500 KEURO
Technology Domains: Electromagnetic Technologies and Techniques / Wave Interaction and Propagation / Wave Propagation / System Design & Verification / System Analysis and Design / Design and Simulation
Establishment: ESTEC
Directorate: Directorate of Tech, Eng. & Quality
Department: Electrical Department
Division: RF Payloads & Technology Division
Contract Officer: Singer, Anze
Industrial Policy Measure: C3 – Activities restricted to SMEs & R&D organisations, prefe…
Last Update Date: 12/06/2019
Update Reason: Tender issue

Integrity and ownership of space data and of related algorithms and auxiliary datasets are two issues that contribute to slowing down the development of space data based science and applications, for example by restricting the application of deep learning approaches. Cloud systems are used mainly for accelerating complex calculations. However, developers create applications only on data they own because they do not trust any sharing and storage mechanism, often not covered by clear policies. As result, applications are based on algorithms trained with limited datasets and therefore they become quickly obsolete and they lose commercial/social value. A possible solution comes from Blockchain technologies, which are disrupting the cloud computing industry: any digital asset (currencies, data, applications, identities and processing power) can be securely tracked, used, commercialized and exchanged without any risk of theft and hack.This activity investigates blockchain to train Artificial Intelligence (AI) models from decentralized sources of data while preserving ownership. The activity encompasses the following tasks:- Identify a pilot case and related space data, e.g. Earth Observation products- Assess available blockchain solutions and select one. Adapt its development tools and interfaces if required- Make data compatible with blockchain architecture- Develop Deep Learning models to process payload data- Adapt these DL models to the blockchain interfaces, tools and execution mechanisms.- Smart contract technologies to train DL models (mentioned before) without compromising ownership or disclosing data- Assess blockchain consensus methods to converge efficiently and concurrently to optimized DL architecturesBenefits and applications- Data and algorithms are securely shared. DL models become more accurate because trained with larger datasets- Applications benefit from better models, consequently data is better understood and gains economic value- Open market of space data and AI models become real and more profitable, not just for few companies- Ground segments may include decentralized components for processing, cataloguing and distributing data with less integrity issues.Procurement Policy: C(3) = Activity restricted to SMEs RD Entities. For additional information please go to EMITS news “Industrial Policy measures for non-primes, SMEs and RD entities in ESA programmes”.

If you wish to access the documents related to the Invitation to Tender, you have to log in to the ESA Portal.