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INDUSTRY 4.0

Maintaining an industrial manufacturing activity is essential for the future prosperity of the Swiss economy. For a high labor cost country such as Switzerland, this can only be achieved by high-end products in combination with smart production processes. Industry 4.0 addresses this optimization of industrial processes and impacts the whole value chain from handling, robotics, and quality control to logistics and new business models. Successful implementation of Industry 4.0 relies heavily on data acquisition, smart algorithms (deep learning), and adaptive concepts (life-long learning) to deliver smart and highly adaptive processes, machines, and equipment. CSEM is mainly active in three fields. First, industrial quality control and process optimization often based on machine vision algorithms. Second, the state of industrial equipment is addressed by monitoring and predicting its status for optimum operating efficiency. Third, we develop human-centric automation strategies because long-term efficiency in industrial processes will only be achieved when equipment supports humans without demotivating or deskilling them.

Last updated: 08.04.2022