robotic learning
Recently Published Documents


TOTAL DOCUMENTS

57
(FIVE YEARS 27)

H-INDEX

7
(FIVE YEARS 3)

Author(s):  
Shengliang Deng ◽  
Xiuxian Guan ◽  
Zekai Sun ◽  
Shixiong Zhao ◽  
Tianxiang Shen ◽  
...  

Sensors ◽  
2021 ◽  
Vol 22 (1) ◽  
pp. 222
Author(s):  
Remko Proesmans ◽  
Andreas Verleysen ◽  
Robbe Vleugels ◽  
Paula Veske ◽  
Victor-Louis De Gusseme ◽  
...  

Smart textiles have found numerous applications ranging from health monitoring to smart homes. Their main allure is their flexibility, which allows for seamless integration of sensing in everyday objects like clothing. The application domain also includes robotics; smart textiles have been used to improve human-robot interaction, to solve the problem of state estimation of soft robots, and for state estimation to enable learning of robotic manipulation of textiles. The latter application provides an alternative to computationally expensive vision-based pipelines and we believe it is the key to accelerate robotic learning of textile manipulation. Current smart textiles, however, maintain wired connections to external units, which impedes robotic manipulation, and lack modularity to facilitate state estimation of large cloths. In this work, we propose an open-source, fully wireless, highly flexible, light, and modular version of a piezoresistive smart textile. Its output stability was experimentally quantified and determined to be sufficient for classification tasks. Its functionality as a state sensor for larger cloths was also verified in a classification task where two of the smart textiles were sewn onto a piece of clothing of which three states are defined. The modular smart textile system was able to recognize these states with average per-class F1-scores ranging from 85.7 to 94.6% with a basic linear classifier.


2021 ◽  
Vol 13 (4) ◽  
pp. 750-768
Author(s):  
Martin Naya-Varela ◽  
Andres Faina ◽  
Richard J. Duro

2021 ◽  
Vol 33 (5) ◽  
pp. 1063-1074
Author(s):  
Kei Kase ◽  
Noboru Matsumoto ◽  
Tetsuya Ogata ◽  
◽  

Deep robotic learning by learning from demonstration allows robots to mimic a given demonstration and generalize their performance to unknown task setups. However, this generalization ability is heavily affected by the number of demonstrations, which can be costly to manually generate. Without sufficient demonstrations, robots tend to overfit to the available demonstrations and lose the robustness offered by deep learning. Applying the concept of motor babbling – a process similar to that by which human infants move their bodies randomly to obtain proprioception – is also effective for allowing robots to enhance their generalization ability. Furthermore, the generation of babbling data is simpler than task-oriented demonstrations. Previous researches use motor babbling in the concept of pre-training and fine-tuning but have the problem of the babbling data being overwritten by the task data. In this work, we propose an RNN-based robot-control framework capable of leveraging targetless babbling data to aid the robot in acquiring proprioception and increasing the generalization ability of the learned task data by learning both babbling and task data simultaneously. Through simultaneous learning, our framework can use the dynamics obtained from babbling data to learn the target task efficiently. In the experiment, we prepare demonstrations of a block-picking task and aimless-babbling data. With our framework, the robot can learn tasks faster and show greater generalization ability when blocks are at unknown positions or move during execution.


2021 ◽  
Vol 15 ◽  
Author(s):  
Samuel Schmidgall ◽  
Julia Ashkanazy ◽  
Wallace Lawson ◽  
Joe Hays

The adaptive changes in synaptic efficacy that occur between spiking neurons have been demonstrated to play a critical role in learning for biological neural networks. Despite this source of inspiration, many learning focused applications using Spiking Neural Networks (SNNs) retain static synaptic connections, preventing additional learning after the initial training period. Here, we introduce a framework for simultaneously learning the underlying fixed-weights and the rules governing the dynamics of synaptic plasticity and neuromodulated synaptic plasticity in SNNs through gradient descent. We further demonstrate the capabilities of this framework on a series of challenging benchmarks, learning the parameters of several plasticity rules including BCM, Oja's, and their respective set of neuromodulatory variants. The experimental results display that SNNs augmented with differentiable plasticity are sufficient for solving a set of challenging temporal learning tasks that a traditional SNN fails to solve, even in the presence of significant noise. These networks are also shown to be capable of producing locomotion on a high-dimensional robotic learning task, where near-minimal degradation in performance is observed in the presence of novel conditions not seen during the initial training period.


2021 ◽  
Vol 17 (2) ◽  
pp. 18-30
Author(s):  
Aiman Al- Allaq ◽  
Nebojsa Jaksic ◽  
Hussein Ali Al-Amili ◽  
Dhuha Mohammed Mahmood

Virtual reality, VR, offers many benefits to technical education, including the delivery of information through multiple active channels, the addressing of different learning styles, and experiential-based learning. This paper presents work performed by the authors to apply VR to engineering education, in three broad project areas: virtual robotic learning, virtual mechatronics laboratory, and a virtual manufacturing platform. The first area provides guided exploration of domains otherwise inaccessible, such as the robotic cell components, robotic kinematics and work envelope.  The second promotes mechatronics learning and guidance for new mechatronics engineers when dealing with robots in a safe and interactive manner. And the third provides valuable guidance for industry and robotic based manufacturing, allowing a better view and simulating conditions otherwise inaccessible.


2021 ◽  
Author(s):  
Boyi Liu ◽  
Lujia Wang ◽  
Xinquan Chen ◽  
Lexiong Huang ◽  
Dong Han ◽  
...  

2021 ◽  
Author(s):  
Felix von Drigalski ◽  
Devwrat Joshi ◽  
Takayuki Murooka ◽  
Kazutoshi Tanaka ◽  
Masashi Hamaya ◽  
...  
Keyword(s):  

2021 ◽  
Vol 12 (1) ◽  
Author(s):  
Yicheng Zhao ◽  
Jiyun Zhang ◽  
Zhengwei Xu ◽  
Shijing Sun ◽  
Stefan Langner ◽  
...  

AbstractStability of perovskite-based photovoltaics remains a topic requiring further attention. Cation engineering influences perovskite stability, with the present-day understanding of the impact of cations based on accelerated ageing tests at higher-than-operating temperatures (e.g. 140°C). By coupling high-throughput experimentation with machine learning, we discover a weak correlation between high/low-temperature stability with a stability-reversal behavior. At high ageing temperatures, increasing organic cation (e.g. methylammonium) or decreasing inorganic cation (e.g. cesium) in multi-cation perovskites has detrimental impact on photo/thermal-stability; but below 100°C, the impact is reversed. The underlying mechanism is revealed by calculating the kinetic activation energy in perovskite decomposition. We further identify that incorporating at least 10 mol.% MA and up to 5 mol.% Cs/Rb to maximize the device stability at device-operating temperature (<100°C). We close by demonstrating the methylammonium-containing perovskite solar cells showing negligible efficiency loss compared to its initial efficiency after 1800 hours of working under illumination at 30°C.


Author(s):  
Masashi Hamaya ◽  
Kazutoshi Tanaka ◽  
Yoshiya Shibata ◽  
Felix Wolf Hans Erich Von Drigalski ◽  
Chisato Nakashima ◽  
...  
Keyword(s):  

Sign in / Sign up

Export Citation Format

Share Document