Neurorobotics is the combined study of neuroscience, robotics, and artificial intelligence. It is the science and technology of embodied autonomous neural systems. Neural systems include brain-inspired algorithms (e.g. connectionist networks), computational models of biological neural networks (e.g. artificial spiking neural networks, large-scale simulations of neural microcircuits) and actual biological systems (e.g. in vivo and in vitro neural nets). Such neural systems can be embodied in machines with mechanic or any other forms of physical actuation. This includes robots, prosthetic or wearable systems but also, at smaller scale, micro-machines and, at the larger scales, furniture and infrastructures.

Neurorobotics is that branch of neuroscience with robotics, which deals with the study and application of science and technology of embodied autonomous neural systems like brain-inspired algorithms. It is based on the idea that the brain is embodied and the body is embedded in the environment. Therefore, most neurorobots are required to function in the real world, as opposed to a simulated environment.[1]

Beyond brain-inspired algorithms for robots neurorobotics may also involve the design of brain-controlled robot systems.[2][3][4]

Major classes of models

edit

Neurorobots can be divided into various major classes based on the robot's purpose. Each class is designed to implement a specific mechanism of interest for study. Common types of neurorobots are those used to study motor control, memory, action selection, and perception.

Locomotion and motor control

edit

Neurorobots are often used to study motor feedback and control systems, and have proved their merit in developing controllers for robots. Locomotion is modeled by a number of neurologically inspired theories on the action of motor systems. Locomotion control has been mimicked using models or central pattern generators, clumps of neurons capable of driving repetitive behavior, to make four-legged walking robots.[5] Other groups have expanded the idea of combining rudimentary control systems into a hierarchical set of simple autonomous systems. These systems can formulate complex movements from a combination of these rudimentary subsets.[6] This theory of motor action is based on the organization of cortical columns, which progressively integrate from simple sensory input into a complex afferent signals, or from complex motor programs to simple controls for each muscle fiber in efferent signals, forming a similar hierarchical structure.

Another method for motor control uses learned error correction and predictive controls to form a sort of simulated muscle memory. In this model, awkward, random, and error-prone movements are corrected for using error feedback to produce smooth and accurate movements over time. The controller learns to create the correct control signal by predicting the error. Using these ideas, robots have been designed which can learn to produce adaptive arm movements[7] or to avoid obstacles in a course.

Learning and memory systems

edit

Robots designed to test theories of animal memory systems. Many studies examine the memory system of rats, particularly the rat hippocampus, dealing with place cells, which fire for a specific location that has been learned.[8][9] Systems modeled after the rat hippocampus are generally able to learn mental maps of the environment, including recognizing landmarks and associating behaviors with them, allowing them to predict the upcoming obstacles and landmarks.[9]

Another study has produced a robot based on the proposed learning paradigm of barn owls for orientation and localization based on primarily auditory, but also visual stimuli. The hypothesized method involves synaptic plasticity and neuromodulation,[10] a mostly chemical effect in which reward neurotransmitters such as dopamine or serotonin affect the firing sensitivity of a neuron to be sharper.[11] The robot used in the study adequately matched the behavior of barn owls.[12] Furthermore, the close interaction between motor output and auditory feedback proved to be vital in the learning process, supporting active sensing theories that are involved in many of the learning models.[10]

Neurorobots in these studies are presented with simple mazes or patterns to learn. Some of the problems presented to the neurorobot include recognition of symbols, colors, or other patterns and execute simple actions based on the pattern. In the case of the barn owl simulation, the robot had to determine its location and direction to navigate in its environment.

Action selection and value systems

edit

Action selection studies deal with negative or positive weighting to an action and its outcome. Neurorobots can and have been used to study simple ethical interactions, such as the classical thought experiment where there are more people than a life raft can hold, and someone must leave the boat to save the rest. However, more neurorobots used in the study of action selection contend with much simpler persuasions such as self-preservation or perpetuation of the population of robots in the study. These neurorobots are modeled after the neuromodulation of synapses to encourage circuits with positive results.[11][13]

In biological systems, neurotransmitters such as dopamine or acetylcholine positively reinforce neural signals that are beneficial. One study of such interaction involved the robot Darwin VII, which used visual, auditory, and a simulated taste input to "eat" conductive metal blocks. The arbitrarily chosen good blocks had a striped pattern on them while the bad blocks had a circular shape on them. The taste sense was simulated by conductivity of the blocks. The robot had positive and negative feedbacks to the taste based on its level of conductivity. The researchers observed the robot to see how it learned its action selection behaviors based on the inputs it had.[14] Other studies have used herds of small robots which feed on batteries strewn about the room, and communicate its findings to other robots.[15]

Sensory perception

edit

Neurorobots have also been used to study sensory perception, particularly vision. These are primarily systems that result from embedding neural models of sensory pathways in automatas. This approach gives exposure to the sensory signals that occur during behavior and also enables a more realistic assessment of the degree of robustness of the neural model. It is well known that changes in the sensory signals produced by motor activity provide useful perceptual cues that are used extensively by organisms. For example, researchers have used the depth information that emerges during replication of human head and eye movements to establish robust representations of the visual scene.[16][17]

Biological robots

edit

Biological robots are not officially neurorobots in that they are not neurologically inspired AI systems, but actual neuron tissue wired to a robot. This employs the use of cultured neural networks to study brain development or neural interactions. These typically consist of a neural culture raised on a multielectrode array (MEA), which is capable of both recording the neural activity and stimulating the tissue. In some cases, the MEA is connected to a computer which presents a simulated environment to the brain tissue and translates brain activity into actions in the simulation, as well as providing sensory feedback[18] The ability to record neural activity gives researchers a window into a brain, which they can use to learn about a number of the same issues neurorobots are used for.

An area of concern with the biological robots is ethics. Many questions are raised about how to treat such experiments. The central question concerns consciousness and whether or not the rat brain experiences it. There are many theories about how to define consciousness.[19][20]

Implications for neuroscience

edit

Neuroscientists benefit from neurorobotics because it provides a blank slate to test various possible methods of brain function in a controlled and testable environment. While robots are more simplified versions of the systems they emulate, they are more specific, allowing more direct testing of the issue at hand.[10][21] They also have the benefit of being accessible at all times, while it is more difficult to monitor large portions of a brain while the human or animal is active, especially individual neurons.[22]

The development of neuroscience has produced neural treatments. These include pharmaceuticals and neural rehabilitation.[23] Progress is dependent on an intricate understanding of the brain and how exactly it functions. It is difficult to study the brain, especially in humans, due to the danger associated with cranial surgeries. Neurorobots can improved the range of tests and experiments that can be performed in the study of neural processes.

See also

edit

References

edit
  1. ^ Chiel HJ, Beer RD (December 1997). "The brain has a body: adaptive behavior emerges from interactions of nervous system, body and environment". Trends in Neurosciences. 20 (12): 553–7. doi:10.1016/s0166-2236(97)01149-1. PMID 9416664. S2CID 5634365.
  2. ^ Vannucci L, Ambrosano A, Cauli N, Albanese U, Falotico E, Ulbrich S, et al. (1 November 2015). "A visual tracking model implemented on the iCub robot as a use case for a novel neurorobotic toolkit integrating brain and physics simulation". 2015 IEEE-RAS 15th International Conference on Humanoid Robots (Humanoids). pp. 1179–1184. doi:10.1109/HUMANOIDS.2015.7363512. ISBN 978-1-4799-6885-5. S2CID 206713899.
  3. ^ Röhrbein F, Laschi C, Walter F, Bohte S, Falotico E, Tolu S, Ulbrich S (September 2015). Brain-Supported Learning Algorithms for Robots (PDF). Proceedings of the EuroAsianPacific Joint Conference on Cognitive Science/4th European Conference on Cognitive Science/11th International Conference on Cognitive Science. Torino, Italy. Retrieved 9 April 2017.
  4. ^ Arrowsmith E (2 October 2012). "A Basic Neurorobotics Platform Using the Neurosky Mindwave". Ern Arrowsmith. Retrieved 9 April 2017 – via wordpress.com.
  5. ^ Ijspeert AJ, Crespi A, Ryczko D, Cabelguen JM (March 2007). "From swimming to walking with a salamander robot driven by a spinal cord model" (PDF). Science. 315 (5817). New York, N.Y.: 1416–20. Bibcode:2007Sci...315.1416I. doi:10.1126/science.1138353. PMID 17347441. S2CID 3193002.
  6. ^ Giszter SF, Moxon KA, Rybak IA, Chapin JK (November 2001). "Neurobiological and neurorobotic approaches to control architectures for a humanoid motor system". Robotics and Autonomous Systems. 37 (2–3): 219–235. doi:10.1016/S0921-8890(01)00159-2.
  7. ^ Eskiizmirliler S, Forestier N, Tondu B, Darlot C (May 2002). "A model of the cerebellar pathways applied to the control of a single-joint robot arm actuated by McKibben artificial muscles". Biological Cybernetics. 86 (5): 379–394. doi:10.1007/s00422-001-0302-1. PMID 11984652. S2CID 8051621.
  8. ^ O'Keefe J, Nadel L (1978). The hippocampus as a cognitive map. Oxford: Clarendon Press. ISBN 978-0-19-857206-0.
  9. ^ a b Matarić MJ (March 1998). "Behavior-based robotics as a tool for synthesis of artificial behavior and analysis of natural behavior". Trends in Cognitive Sciences. 2 (3): 82–6. doi:10.1016/s1364-6613(98)01141-3. PMID 21227083. S2CID 17860567.
  10. ^ a b c Rucci M, Bullock D, Santini F (January 2007). "Integrating robotics and neuroscience: brains for robots, bodies for brains". Advanced Robotics. 21 (10): 1115–1129. doi:10.1163/156855307781389428. S2CID 18575829.
  11. ^ a b Cox BR, Krichmar JL (September 2009). "Neuromodulation as a robot controller". IEEE Robotics & Automation Magazine. 16 (3): 72–80. doi:10.1109/mra.2009.933628. S2CID 16807722.
  12. ^ Rucci M, Edelman GM, Wray J (February 1999). "Adaptation of orienting behavior: From the barn owl to a robotic system". IEEE Transactions on Robotics and Automation. 15 (1): 96–110. doi:10.1109/70.744606. S2CID 8061163.
  13. ^ Hasselmo ME, Hay J, Ilyn M, Gorchetchnikov A (2002). "Neuromodulation, theta rhythm and rat spatial navigation". Neural Networks. 15 (4–6): 689–707. doi:10.1016/s0893-6080(02)00057-6. PMID 12371520.
  14. ^ Krichmar JL, Edelman GM (August 2002). "Machine psychology: autonomous behavior, perceptual categorization and conditioning in a brain-based device". Cerebral Cortex. 12 (8). New York, N.Y.: 818–30. doi:10.1093/cercor/12.8.818. PMID 12122030.
  15. ^ Doya K, Uchibe E (June 2005). "The cyber rodent project: Exploration of adaptive mechanisms for self-preservation and self-reproduction". Adaptive Behavior. 13 (2): 149–160. doi:10.1177/105971230501300206. S2CID 35959217.
  16. ^ Santini F, Rucci M (February 2007). "Active estimation of distance in a robotic system that replicates human eye movement". Robotics and Autonomous Systems. 55 (2): 107–121. doi:10.1016/j.robot.2006.07.001.
  17. ^ Kuang X, Gibson M, Shi BE, Rucci M (July 2012). "Active vision during coordinated head/eye movements in a humanoid robot". IEEE Transactions on Robotics. 28 (6): 1423–1430. doi:10.1109/TRO.2012.2204513. S2CID 17969004.
  18. ^ Demarse TB, Wagenaar DA, Blau AW, Potter SM (2001). "The Neurally Controlled Animat: Biological Brains Acting with Simulated Bodies". Autonomous Robots. 11 (3): 305–310. doi:10.1023/a:1012407611130. PMC 2440704. PMID 18584059.
  19. ^ Warwick K (September 2010). "Implications and consequences of robots with biological brains". Ethics and Information Technology. 12 (3): 223–234. doi:10.1007/s10676-010-9218-6. S2CID 1263639.
  20. ^ Bentzen MM (2014). "Brains on Wheels: Theoretical and Ethical Issues in Bio-Robotics.". Sociable Robots and the Future of Social Relations. IOS Press. pp. 245–251. doi:10.3233/978-1-61499-480-0-245. S2CID 67790806.
  21. ^ Niu CM, Jalaleddini K, Sohn WJ, Rocamora J, Sanger TD, Valero-Cuevas FJ (April 2017). "Neuromorphic meets neuromechanics, part I: the methodology and implementation". Journal of Neural Engineering. 14 (2): 025001. Bibcode:2017JNEng..14b5001N. doi:10.1088/1741-2552/aa593c. PMC 5540665. PMID 28084217.
  22. ^ Jalaleddini K, Minos Niu C, Chakravarthi Raja S, Joon Sohn W, Loeb GE, Sanger TD, Valero-Cuevas FJ (April 2017). "Neuromorphic meets neuromechanics, part II: the role of fusimotor drive". Journal of Neural Engineering. 14 (2): 025002. Bibcode:2017JNEng..14b5002J. doi:10.1088/1741-2552/aa59bd. PMC 5394229. PMID 28094764.
  23. ^ Bach-y-Rita P (July 1999). "Theoretical aspects of sensory substitution and of neurotransmission-related reorganization in spinal cord injury". Spinal Cord. 37 (7): 465–74. doi:10.1038/sj.sc.3100873. PMID 10438112. S2CID 8419555.
edit