All objectives were fully achieved by the Project.
For Objective 1 the Partners have built a demonstrator of open-ended learning technology applied to grasping applications in a warehouse scenario.
A software architecture with multiple components was implemented first on a mockup-up form, then on a complete form able to control a robot KUKA iiiwa R800 plus a 3-finger Robotiq gripper and operate on a real scenario.
The final architecture comprises many modules which enable the robot to receive a picking order comprising multiple items, analyze the surrounding scenario to locate, identify and then pickup each item and place them into a basket.
All modules that enable grasping can be trained so that the robot can adapt to different objects and circumstances.
A dashboard enables the end user to monitor the robot global and object-specific performance so that new learning can be started when needed.
For Objective 2 the Partners have made a Technology Assessment to analyze the technical and commercial viability of the proposed solution.
In a first part of the work, warehouse stakeholders were contacted and a survey was made to derive useful KPI - key performance indicators - to be used for the Assessment.
After the demonstrator was realized, its performance was analyzed to understand the current gap and future improvements needed to bridge from the current demonstrator to a full product.
For Objective 3 the Partners have engaged into dissemination and prepared a Business Plan for the continuation of the work beyond the scope of this project, to bring the current demonstrator up to TRL9.
For the dissemination the Partners have: prepared dissemination materials, such as a website, a folder, posters and a video; ensured that the demonstrator was easy to transport and show at events; brought the demonstrator to a potential customer site for a demo and then at the Automation & Testing industry fair in Turin.
The latter event was a big success because one of the contacts at the fair immediately turned into a working collaboration for similar applications, which will help to keep developing GROW onwards.