 
					Driven by rapid advances in robotics and artificial intelligence, intelligent robots are emerging as revolutionary engines propelling next-generation productivity and spearheading a new global wave of technological transformation. Intelligent Robotics possesses capabilities spanning environmental perception, real-time analysis, autonomous decision-making, and self-adaptive learning—all fundamentally reliant on master control chips that serve as core computing platforms delivering formidable computational power. Consequently, intelligent robotics master control chips have become critical enablers determining robotic functionality and performance benchmarks.
With the continuous advancement in intelligence of mobile robots, the complex tasks performed by robots—including perception, localization, mapping, navigation, interaction and so on—pose two critical challenges to the computational power and energy efficiency of master control chips. On one hand, these complex tasks require processing massive amounts of sensor data and frequent memory access, demanding high computational power for real-time processing and rapid response. On the other hand, high computational power leads to elevated energy consumption and battery limitations under mobile operating conditions, requiring chips to enhance energy efficiency while maintaining computational performance to extend operational endurance.
Application-specific computing chips, designed and optimized for dedicated algorithms, tasks, and requirements, represent a critical pathway to addressing the dual challenges of computational power and energy efficiency. Developing energy-efficient application-specific integrated circuits (ASIC) for intelligent mobile robots—particularly space-constrained and energy-limited small-scale, micro-, and nano-robots—is imperative, emerging as a pivotal research trend in the field.