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1.
Sensors (Basel) ; 21(13)2021 Jul 02.
Article in English | MEDLINE | ID: mdl-34283129

ABSTRACT

The lateral line organ of fish has inspired engineers to develop flow sensor arrays-dubbed artificial lateral lines (ALLs)-capable of detecting near-field hydrodynamic events for obstacle avoidance and object detection. In this paper, we present a comprehensive review and comparison of ten localisation algorithms for ALLs. Differences in the studied domain, sensor sensitivity axes, and available data prevent a fair comparison between these algorithms from their original works. We compare them with our novel quadrature method (QM), which is based on a geometric property specific to 2D-sensitive ALLs. We show how the area in which each algorithm can accurately determine the position and orientation of a simulated dipole source is affected by (1) the amount of training and optimisation data, and (2) the sensitivity axes of the sensors. Overall, we find that each algorithm benefits from 2D-sensitive sensors, with alternating sensitivity axes as the second-best configuration. From the machine learning approaches, an MLP required an impractically large training set to approach the optimisation-based algorithms' performance. Regardless of the data set size, QM performs best with both a large area for accurate predictions and a small tail of large errors.


Subject(s)
Lateral Line System , Algorithms , Animals , Fishes , Hydrodynamics , Machine Learning
2.
J R Soc Interface ; 17(162): 20190616, 2020 01.
Article in English | MEDLINE | ID: mdl-31964270

ABSTRACT

This research focuses on the signal processing required for a sensory system that can simultaneously localize multiple moving underwater objects in a three-dimensional (3D) volume by simulating the hydrodynamic flow caused by these objects. We propose a method for localization in a simulated setting based on an established hydrodynamic theory founded in fish lateral line organ research. Fish neurally concatenate the information of multiple sensors to localize sources. Similarly, we use the sampled fluid velocity via two parallel lateral lines to perform source localization in three dimensions in two steps. Using a convolutional neural network, we first estimate a two-dimensional image of the probability of a present source. Then we determine the position of each source, via an automated iterative 3D-aware algorithm. We study various neural network architectural designs and different ways of presenting the input to the neural network; multi-level amplified inputs and merged convolutional streams are shown to improve the imaging performance. Results show that the combined system can exhibit adequate 3D localization of multiple sources.


Subject(s)
Lateral Line System , Algorithms , Animals , Hydrodynamics , Neural Networks, Computer , Signal Processing, Computer-Assisted
3.
Bioinspir Biomim ; 14(5): 055001, 2019 07 11.
Article in English | MEDLINE | ID: mdl-31239415

ABSTRACT

The lateral line is a mechanosensory organ found in fish and amphibians that allows them to sense and act on their near-field hydrodynamic environment. We present a 2D-sensitive artificial lateral line (ALL) comprising eight all-optical flow sensors, which we use to measure hydrodynamic velocity profiles along the sensor array in response to a moving object in its vicinity. We then use the measured velocity profiles to reconstruct the object's location, via two types of neural networks: feed-forward and recurrent. Several implementations of feed-forward neural networks for ALL source localisation exist, while recurrent neural networks may be more appropriate for this task. The performance of a recurrent neural network (the long short-term memory, LSTM) is compared to that of a feed-forward neural network (the online-sequential extreme learning machine, OS-ELM) via localizing a 6 cm sphere moving at 13 cm s-1. Results show that, in a 62 cm [Formula: see text] 9.5 cm area of interest, the LSTM outperforms the OS-ELM with an average localisation error of 0.72 cm compared to 4.27 cm, respectively. Furthermore, the recurrent network is relatively less affected by noise, indicating that recurrent connections can be beneficial for hydrodynamic object localisation.


Subject(s)
Biomimetics , Hydrodynamics , Imaging, Three-Dimensional , Neural Networks, Computer , Animals , Lateral Line System/physiology , Machine Learning , Online Systems , Signal Processing, Computer-Assisted
4.
Bioinspir Biomim ; 13(2): 026013, 2018 02 27.
Article in English | MEDLINE | ID: mdl-29334081

ABSTRACT

We present the design, fabrication and testing of a novel all-optical 2D flow velocity sensor, inspired by a fish lateral line neuromast. This artificial neuromast consists of optical fibres inscribed with Bragg gratings supporting a fluid force recipient sphere. Its dynamic response is modelled based on the Stokes solution for unsteady flow around a sphere and found to agree with experimental results. Tuneable mechanical resonance is predicted, allowing a deconvolution scheme to accurately retrieve fluid flow speed and direction from sensor readings. The optical artificial neuromast achieves a low frequency threshold flow sensing of 5 mm s-1 and 5 µm s-1 at resonance, with a typical linear dynamic range of 38 dB at 100 Hz sampling. Furthermore, the optical artificial neuromast is shown to determine flow direction within a few degrees.


Subject(s)
Biomimetics/methods , Fishes/physiology , Lateral Line System/physiology , Optics and Photonics/instrumentation , Animals , Equipment Design , Hydrodynamics , Optics and Photonics/methods
5.
Bioinspir Biomim ; 12(5): 056009, 2017 09 26.
Article in English | MEDLINE | ID: mdl-28707626

ABSTRACT

Fish are able to sense water flow velocities relative to their body with their mechanoreceptive lateral line organ. This organ consists of an array of flow detectors distributed along the fish body. Using the excitation of these individual detectors, fish can determine the location of nearby moving objects. Inspired by this sensory modality, it is shown here how neural networks can be used to extract an object's location from simulated excitation patterns, as can be measured along arrays of stationary artificial flow velocity sensors. The applicability, performance and robustness with respect to input noise of different neural network architectures are compared. When trained and tested under high signal to noise conditions (46 dB), the Extreme Learning Machine architecture performs best with a mean Euclidean error of 0.4% of the maximum depth of the field D, which is taken half the length of the sensor array. Under lower signal to noise conditions Echo State Networks, having recurrent connections, enhance the performance while the Multilayer Perceptron is shown to be the most noise robust architecture. Neural network performance decreased when the source moves close to the sensor array or to the sides of the array. For all considered architectures, increasing the number of detectors per array increased localization performance and robustness.


Subject(s)
Biomimetic Materials/standards , Lateral Line System , Neural Networks, Computer , Animals , Fishes/physiology , Lateral Line System/physiology , Mechanoreceptors/physiology
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