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Control of movement of underwater swimmers: Animals, simulated animates and swimming robots. / Гордлеева, Сусанна; Кастальский, Иннокентий; Цыбина, Юлия; Ермолаева, Анастасия; Храмов, Александр Евгеньевич; Казанцев, Виктор.

в: Physics of Life Reviews, Том 47, 01.12.2023, стр. 211-244.

Результаты исследований: Научные публикации в периодических изданияхстатьяРецензирование

Harvard

Гордлеева, С, Кастальский, И, Цыбина, Ю, Ермолаева, А, Храмов, АЕ & Казанцев, В 2023, 'Control of movement of underwater swimmers: Animals, simulated animates and swimming robots', Physics of Life Reviews, Том. 47, стр. 211-244. https://doi.org/10.1016/j.plrev.2023.10.037

APA

Гордлеева, С., Кастальский, И., Цыбина, Ю., Ермолаева, А., Храмов, А. Е., & Казанцев, В. (2023). Control of movement of underwater swimmers: Animals, simulated animates and swimming robots. Physics of Life Reviews, 47, 211-244. https://doi.org/10.1016/j.plrev.2023.10.037

Vancouver

Гордлеева С, Кастальский И, Цыбина Ю, Ермолаева А, Храмов АЕ, Казанцев В. Control of movement of underwater swimmers: Animals, simulated animates and swimming robots. Physics of Life Reviews. 2023 Дек. 1;47:211-244. https://doi.org/10.1016/j.plrev.2023.10.037

Author

Гордлеева, Сусанна ; Кастальский, Иннокентий ; Цыбина, Юлия ; Ермолаева, Анастасия ; Храмов, Александр Евгеньевич ; Казанцев, Виктор. / Control of movement of underwater swimmers: Animals, simulated animates and swimming robots. в: Physics of Life Reviews. 2023 ; Том 47. стр. 211-244.

BibTeX

@article{c21f760d48444c9bb85ddbfb306ec9cc,
title = "Control of movement of underwater swimmers: Animals, simulated animates and swimming robots",
abstract = "The control of movement in living organisms represents a fundamental task that the brain has evolved to solve. One crucial aspect is how the nervous system organizes the transformation of sensory information into motor commands. These commands lead to muscle activation and subsequent animal movement, which can exhibit complex patterns. One example of such movement is locomotion, which involves the translation of the entire body through space. Central Pattern Generators (CPGs) are neuronal circuits that provide control signals for these movements. Compared to the intricate circuits found in the brain, CPGs can be simplified into networks of neurons that generate rhythmic activation, coordinating muscle movements. Since the 1990s, researchers have developed numerous models of locomotive circuits to simulate different types of animal movement, including walking, flying, and swimming. Initially, the primary goal of these studies was to construct biomimetic robots. However, it became apparent that simplified CPGs alone were not sufficient to replicate the diverse range of adaptive locomotive movements observed in living organisms. Factors such as sensory modulation, higher-level control, and cognitive components related to learning and memory needed to be considered. This necessitated the use of more complex, high-dimensional circuits, as well as novel materials and hardware, in both modeling and robotics. With advancements in high-power computing, artificial intelligence, big data processing, smart materials, and electronics, the possibility of designing a new generation of true bio-mimetic robots has emerged. These robots have the capability to imitate not only simple locomotion but also exhibit adaptive motor behavior and decision-making. This motivation serves as the foundation for the current review, which aims to analyze existing concepts and models of movement control systems. As an illustrative example, we focus on underwater movement and explore the fundamental biological concepts, as well as the mathematical and physical models that underlie locomotion and its various modulations.",
author = "Сусанна Гордлеева and Иннокентий Кастальский and Юлия Цыбина and Анастасия Ермолаева and Храмов, {Александр Евгеньевич} and Виктор Казанцев",
year = "2023",
month = dec,
day = "1",
doi = "10.1016/j.plrev.2023.10.037",
language = "English",
volume = "47",
pages = "211--244",
journal = "Physics of Life Reviews",
issn = "1571-0645",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - Control of movement of underwater swimmers: Animals, simulated animates and swimming robots

AU - Гордлеева, Сусанна

AU - Кастальский, Иннокентий

AU - Цыбина, Юлия

AU - Ермолаева, Анастасия

AU - Храмов, Александр Евгеньевич

AU - Казанцев, Виктор

PY - 2023/12/1

Y1 - 2023/12/1

N2 - The control of movement in living organisms represents a fundamental task that the brain has evolved to solve. One crucial aspect is how the nervous system organizes the transformation of sensory information into motor commands. These commands lead to muscle activation and subsequent animal movement, which can exhibit complex patterns. One example of such movement is locomotion, which involves the translation of the entire body through space. Central Pattern Generators (CPGs) are neuronal circuits that provide control signals for these movements. Compared to the intricate circuits found in the brain, CPGs can be simplified into networks of neurons that generate rhythmic activation, coordinating muscle movements. Since the 1990s, researchers have developed numerous models of locomotive circuits to simulate different types of animal movement, including walking, flying, and swimming. Initially, the primary goal of these studies was to construct biomimetic robots. However, it became apparent that simplified CPGs alone were not sufficient to replicate the diverse range of adaptive locomotive movements observed in living organisms. Factors such as sensory modulation, higher-level control, and cognitive components related to learning and memory needed to be considered. This necessitated the use of more complex, high-dimensional circuits, as well as novel materials and hardware, in both modeling and robotics. With advancements in high-power computing, artificial intelligence, big data processing, smart materials, and electronics, the possibility of designing a new generation of true bio-mimetic robots has emerged. These robots have the capability to imitate not only simple locomotion but also exhibit adaptive motor behavior and decision-making. This motivation serves as the foundation for the current review, which aims to analyze existing concepts and models of movement control systems. As an illustrative example, we focus on underwater movement and explore the fundamental biological concepts, as well as the mathematical and physical models that underlie locomotion and its various modulations.

AB - The control of movement in living organisms represents a fundamental task that the brain has evolved to solve. One crucial aspect is how the nervous system organizes the transformation of sensory information into motor commands. These commands lead to muscle activation and subsequent animal movement, which can exhibit complex patterns. One example of such movement is locomotion, which involves the translation of the entire body through space. Central Pattern Generators (CPGs) are neuronal circuits that provide control signals for these movements. Compared to the intricate circuits found in the brain, CPGs can be simplified into networks of neurons that generate rhythmic activation, coordinating muscle movements. Since the 1990s, researchers have developed numerous models of locomotive circuits to simulate different types of animal movement, including walking, flying, and swimming. Initially, the primary goal of these studies was to construct biomimetic robots. However, it became apparent that simplified CPGs alone were not sufficient to replicate the diverse range of adaptive locomotive movements observed in living organisms. Factors such as sensory modulation, higher-level control, and cognitive components related to learning and memory needed to be considered. This necessitated the use of more complex, high-dimensional circuits, as well as novel materials and hardware, in both modeling and robotics. With advancements in high-power computing, artificial intelligence, big data processing, smart materials, and electronics, the possibility of designing a new generation of true bio-mimetic robots has emerged. These robots have the capability to imitate not only simple locomotion but also exhibit adaptive motor behavior and decision-making. This motivation serves as the foundation for the current review, which aims to analyze existing concepts and models of movement control systems. As an illustrative example, we focus on underwater movement and explore the fundamental biological concepts, as well as the mathematical and physical models that underlie locomotion and its various modulations.

UR - https://www.mendeley.com/catalogue/1197e2b2-cd0e-358d-8721-2f1800ba816d/

U2 - 10.1016/j.plrev.2023.10.037

DO - 10.1016/j.plrev.2023.10.037

M3 - Article

VL - 47

SP - 211

EP - 244

JO - Physics of Life Reviews

JF - Physics of Life Reviews

SN - 1571-0645

ER -

ID: 114307282