Today 201

Yesterday 601

All 39410757

Tuesday, 16.04.2024
eGovernment Forschung seit 2001 | eGovernment Research since 2001

NUS and ST Engineering are collaborating on a S$9 million, multi-year advanced digital technologies research programme to further their common goals of building a people-centric, smart future for Singapore and beyond.

Research efforts of this new programme will focus on technologies related to Smart City as well as Smart Maintenance, Repairs and Overhaul (MRO), covering five areas: resource optimisation and scheduling; prescriptive analytics; decision and sense-making; reasoning engine and machine learning; as well as digital twin. These research areas support ST Engineering’s focus on developing differentiated and people-centric, smart city solutions that meet the present and future needs of cities around the world. The interdisciplinary research areas are also aligned with NUS’ endeavours as a driving force behind smart city innovations, leveraging its deep expertise that spans multiple domains and faculties.

Helmed by Associate Professor Aaron Chia from NUS Industrial Systems Engineering and Management as its Director, and Mr Jinson Xu, Head of the Data Analytics Strategic Technology Centre at ST Engineering, as its Co-Director, the programme will first focus on two key research projects to lay the foundations for digital transformation and Industry 4.0:

  1. Enterprise Digital Platform (EDP)

    As the backbone of smart city solutions, the EDP is a flexible, modular and scalable artificial intelligence (AI) platform that will support all the AI methodological areas, enabling the synthesis of disparate data sources and other internal or external systems, to orchestrate cross-vertical data and insights from customers and partners. All AI models derived from research projects under this programme will be integrated onto a common AI engine stacked within the EDP, paving the way for future-ready platforms that catalyse technology transformation and create new information-based revenue streams.

  2. Urban Traffic Flow Management

    In this project, researchers will develop algorithms that alleviate traffic congestion by using a holistic urban traffic flow smoothening approach based on traffic data analytics and AI technologies. Examples include traffic state estimation and prediction, in addition to effective active traffic control and management strategies identification and implementation. This will have future applications as autonomous vehicle technologies, 5G infrastructure and machine-to-machine (M2M) technologies start to mature and proliferate.

Professor Chen Tsuhan, NUS Deputy President (Research & Technology), said, “As Singapore advances its position as a Smart Nation, having the right enterprise architecture to support those goals will determine if true digital transformation can be achieved. Over the years, NUS and ST Engineering have enjoyed a close and productive relationship. This new collaboration will combine NUS’ expertise in the science of cities with ST Engineering’s industry knowledge to co-create people-centric Smart City solutions that will form the foundational systems to bring about not just impactful, but radical, change to the lives of people in Singapore and the world.”

Mr Harris Chan, Chief Digital Officer and Chief Technology Officer at ST Engineering, said, “This collaboration with NUS will allow us to delve deeper into the application of AI in new domains to catalyse the pipeline of next-generation technologies and solutions that address the evolving urban challenges that cities will continue to face. ST Engineering and NUS bring unique strengths to this partnership and we are confident that this programme will provide our research and engineering talents with opportunities to enrich their knowledge and deepen their expertise through real-world applications, paving the way for the development of impactful innovations that create more vibrant and sustainable cities of the future.”

---

Quelle/Source: India Education Diary, 16.09.2020

Bitte besuchen Sie/Please visit:

Go to top