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    Investigators from University of Rey Juan Carlos Report New Data on Robotics (Ro bots In Action)

    58-59页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Current study results on Robotics have been published. According to news reportingfrom Madrid, Spain, by NewsRx journ alists, research stated, “This empirical study delves into the intricatefactors that shape firms’ choices regarding the adoption of robots within the Spanish c ontext. Usinga dataset encompassing a diverse set of industries, we employ an e mpirical analysis to uncover thedeterminants of robot adoption and investigate the associated outcomes on market variables.”

    Studies from Nanjing University of Aeronautics and Astronautics Reveal New Findi ngs on Robotics (Transition Gradient From Standing To Traveling Waves for Energy -efficient Slope Climbing of a Gecko-inspired Robot)

    59-59页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Investigators publish new report on Ro botics. According to news originating fromNanjing, People’s Republic of China, by NewsRx correspondents, research stated, “Lateral undulationpatterns of a fle xible spine, including standing waves, traveling waves, and their transitions, e nable agileand versatile locomotion in sprawling animals. Inspired by this, we proposed body-wave transition strategiesfor energy-efficient inclined-surface c limbing of a gecko-inspired robot with a bendable body.”

    Research Study Findings from Korea Advanced Institute of Science and Technology (KAIST) Update Understanding of Robotics (Development of an Indoor Delivery Mobi le Robot for a Multi-Floor Environment)

    60-60页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – New research on robotics is the subjec t of a new report. According to news reportingout of the Korea Advanced Institu te of Science and Technology (KAIST) by NewsRx editors, researchstated, “In rec ent years, the demand for delivery services has increased by applying robot tech nology invarious fields such as food services, logistics, hospitals, and hotel business. However, it is still challengingto perform autonomous delivery in mul ti-floor buildings.”

    Center for Research Reports Findings in Machine Learning (Optimizing PCF-SPR sen sor design through Taguchi approach, machine learning, and genetic algorithms)

    61-61页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews – New research on Machine Learning is the subject o f a report. According to news originatingfrom Sousse, Tunisia, by NewsRx corres pondents, research stated, “Designing Photonic Crystal Fibersincorporating the Surface Plasmon Resonance Phenomenon (PCF-SPR) has led to numerous interestinga pplications. This investigation presents an exceptionally responsive surface pla smon resonance sensor,seamlessly integrated into a dual-core photonic crystal f iber, specifically designed for low refractive index(RI) detection.”

    New Findings on Robotics Described by Investigators at Harbin Institute of Techn ology (Mtabot: an Efficient Morphable Terrestrialaerial Robot With Two Transfor mable Wheels)

    62-62页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – New research on Robotics is the subjec t of a report. According to news reportingoriginating from Harbin, People’s Rep ublic of China, by NewsRx correspondents, research stated,“Terrestrial-aerial r obots, capable of swift aerial navigation and enduring terrestrial operations, p ossesssignificant potential for utilization in exploration and rescue missions. However, achieving their capabilityto negotiate diverse terrains with a high-p ower-efficient structure remains a formidable challenge.”

    Study Findings on Intelligent Systems Are Outlined in Reports from Southern Univ ersity of Science and Technology (SUSTech) (Accelerating Multi-objective Neural Architecture Search By Randomweight Evaluation)

    63-63页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Research findings on Machine Learning - Intelligent Systems are discussed in a newreport. According to news reporting originating from Shenzhen, People’s Republic of China, by NewsRxcorrespondents , research stated, “For the goal of automated design of high-performance deep co nvolutionalneural networks (CNNs), neural architecture search (NAS) methodology is becoming increasingly importantfor both academia and industries. Due to the costly stochastic gradient descent training of CNNs forperformance evaluation, most existing NAS methods are computationally expensive for real-world deployments.”

    Reports from Jiangnan University Highlight Recent Findings in Robotics (4d-print ed Bionic Soft Robot With Superior Mechanical Properties and Fast Near-infrared Light Response)

    64-64页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Data detailed on Robotics have been pr esented. According to news reporting originatingfrom Wuxi, People’s Republic of China, by NewsRx correspondents, research stated, “Inspired by naturalorganism s, a four-dimensional (4D)-printed starfish-like bionic soft robot (SBSR) was ef fectively preparedby integrating three-dimensional (3D) printing with smart hyd rogels. The body of the SBSR is composedof a reduced graphene oxide-poly(N-isop ropylacrylamide) hydrogel (rGO-PNH) with superior mechanicalproperties.”

    Harvard University Reports Findings in Machine Learning (A Machine Learning Pers pective On the Inverse Indentation Problem: Uniqueness, Surrogate Modeling, and Learning Elasto-plastic Properties From Pile-up)

    65-65页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews – Investigators publish new report on Machine Learn ing. According to news originating from Cambridge,Massachusetts, by NewsRx corr espondents, research stated, “The inverse analysis of indentationcurves, aimed at extracting the stress-strain curve of a material, has been under intense deve lopmentfor decades, with progress relying mainly on the use of analytical expre ssions derived from small datasets. Here, we take a fresh, data-driven perspect ive to this classic problem, leveraging machine learningtechniques to advance i ndentation technology.”

    Researchers at University of Texas San Antonio Target Robotics (Fedhip: Federate d Learning for Privacy-preserving Human Intention Prediction In Human-robot Coll aborative Assembly Tasks)

    66-67页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Investigators publish new report on Ro botics. According to news reporting out ofSan Antonio, Texas, by NewsRx editors , research stated, “Human -robot collaboration is a promising solution to reliev e construction workers from repetitive and physically demanding tasks, thus impr ovingconstruction safety and productivity. Many studies have developed various deep learning models for humanintention prediction, which will form the basis f or proactive and adaptive robot planning and control toenable intelligent human -robot collaboration.”

    New Robotics Research Reported from Shanghai University of Engineering Science ( Research on Fault Diagnosis of Robot Arm With Dynamic Simulation and Domain Adap tation)

    66-66页
    查看更多>>摘要:By a News Reporter-Staff News Editor at Robotics & Machine Learning DailyNews Daily News – Current study results on robotics have been published. According to news reportingfrom Shanghai, People’s Republic of China, by NewsRx journalists, research stated, “The main challengesin the fiel d of fault diagnosis of robot arms lie in the difficulties of acquiring fault da ta and ensuringmodel applicability. For a fault robot arm, the trained models t ypically only perform well on test data andcannot be effectively applied in pra ctical scenarios.”