


Focusing on the artificial intelligence track, this company in Pudong is laying out the robot autonomous mobile navigation industry
As the highland of artificial intelligence in the country, Pudong is making breakthroughs in many points and accelerating to get ahead. At present, Pudong's artificial intelligence industry is showing a trend of gathering and leading development. In this rapidly developing field, Silan Technology is developing the robot autonomous mobile navigation industry in Zhangjiang by adopting a "one horizontal and three vertical" layout. In terms of technology, we continue to combine scenario applications to iteratively upgrade technology; in terms of products, we continue to make breakthroughs to provide stable and reliable products for the market; in terms of manufacturing, we use intelligent manufacturing to empower production line upgrades; in terms of business models, we adopt flexible cooperation model to promote ecological development
After ten years of research and development, Silan Technology has accumulated a large amount of scene data, continuously iteratively fine-tuned algorithm models, and its connected products have become more and more abundant. Now, we have polished a mature solution for sensors and algorithms - slamware autonomous positioning and navigation solution
This slamware independent positioning and navigation solution has multi-sensor fusion technology, slip detection technology, global relocation technology, positioning anomaly detection and other technologies, which can achieve 80% indoor positioning error in complex scenarios. Recently, this technology of Silan Technology won the first prize of the "2023 Satellite Navigation and Positioning Technology Progress Award", which is the only science and technology award set in the field of satellite navigation technology in my country.
For robots, the most "fearful" thing is the sudden change of people in the process of advancement, or the environment that changes by more than 50%, which can easily "collapse". When this happens, Slamware's autonomous positioning and navigation solution can still achieve accurate positioning and navigation even when the environment changes close to 100%. At the same time, it has strong mobility capabilities, such as the ability to freely shuttle through small spaces, intelligent obstacle avoidance, etc.; Stronger connectivity, such as connecting with elevators, connecting with counters, connecting with production lines, etc.
In the process of promoting the construction of the pilot area for artificial intelligence innovation and application, Silan Technology actively integrates with market demand, continues to strive to innovate in products, and actively explores new technologies and applications. They have successfully developed more than 10 radar products with different performances. This year, Silan Technology has launched two more lidars, targeting the industrial and commercial fields respectively. It is understood that these two lidars are mainly used in practical application scenarios such as navigation and obstacle avoidance of service robots, obstacle detection and avoidance in AGV scenarios, and lightweight autonomous driving (unmanned vehicles in parks). At the same time, this also fills a key link in the artificial intelligence industry chain in Pudong New Area and adds new impetus to the development of the new ecology
Ten years ago, Silan Technology took root in Zhangjiang, Pudong, a place where high-tech industries gather, and "took root and sprouted" in this fertile ground for entrepreneurship in the technology industry. Chen Shikai, co-founder and CEO of Silan Technology, said that in the next decade, as a local enterprise in Pudong, Silan will continue to adhere to technology-driven and product-driven policies, carry out comprehensive layout around these three mainstream business lines, improve research and development efficiency, and lead the realization of the robot industry. This major leap from "automation" to "intelligence" will help Pudong promote the construction of a world-class artificial intelligence industrial cluster.
Source: Pudong Release
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