HomeTechnologyControlling Complex Systems with AI

    Controlling Complex Systems with AI

    Researchers have developed an artificial neural network that can solve challenging control problems. The self-learning system can be used for the optimization of supply chains and production processes as well as for smart grids or traffic control systems.

    Power cuts, financial network failures and supply chain disruptions are just some of the many of problems typically encountered in complex systems that are very difficult or even impossible to control using existing methods. Control systems based on artificial intelligence (AI) can help to optimize complex processes—and can also be used to develop new business models.

    Both researchers have developed a versatile AI-based control system called AI Pontryagin which is designed to steer complex systems and networks towards desired target states. Using a combination of numerical and analytical methods, the researchers demonstrate how AI Pontryagin automatically learns to control systems in near-optimal ways even when the AI has not previously been informed of the ideal solution.

    Self-learning control system

    Fluctuations in complex systems are capable of triggering cascades and blackouts. To avoid such incidents and improve resilience, system specialists have devised a wide variety of control mechanisms and regulations; typical applications include voltage control in power grids, for example, or stress testing in financial institutions. And yet it is not always possible to control complex dynamic systems by manual intervention.

    In their paper, the researchers show how AI Pontryagin automatically learns quasi-optimal control signals for complex dynamic systems. The researchers’ analysis lays much of the vital groundwork; further research is still required to determine the system’s applicability to specific, real-world cases. At present, control methods are typically used to, for example, protect power grids from fluctuations and outages, manage epidemics, and optimize supply chains.

    Supply-chain control as possible application

    To use AI Pontryagin as intended, the AI must first be provided with information on the target system’s dynamics. In supply chains, this might include details of the number of possible suppliers, as well as purchasing costs and turnaround times. This information is used to determine which areas require dynamic optimisation.

    Users must also provide information on the system’s initial status, such as current stock levels, and its desired (target) status, such as the requirement to replenish stock to certain levels while minimizing the use of resources.

    Related News

    Must Read

    Building Reliable 5G and 6G Networks Through Mobile Network Testing

    The development of communication networks has entered a revolutionary...

    Beyond the Screen: envisioning a giant leap forward for smartphones from physical objects to immersive experiences

    Author: STMicroelectronics Smartphones have become some of the most ubiquitous...

    Microchip’s SkyWire Tech Enables Nanosecond-Level Clock Sync Across Locations

    To protect critical infrastructure systems, SkyWire technology enables highly...

    Next Generation Hybrid Systems Transforming Vehicles

    The global automotive industry is undergoing a fundamental transformation...

    Tobii and STMicroelectronics enter mass production of breakthrough interior sensing technology

    Tobii and STMicroelectronics announced the beginning of mass production...

    Rohde & Schwarz unveils compact MXO 3 oscilloscopes with 4 and 8 channels

    Rohde & Schwarz expands its next-generation MXO oscilloscope portfolio...

    TI’s new power-management solutions enable scalable AI infrastructures

    Texas Instruments (TI) debuted new design resources and power-management...

    ESA awards Rohde & Schwarz for contributions to 30 years European Satellite Navigation

    The event brought together institutional and industrial partners, ESA...