We develop a rapidly converging algorithm for stabilizing a large channel-count diffractive optical coherent beam combination. An 81-beam combiner is controlled by a novel, machine-learning based, iterative method to correct the optical phases, operating on an experimentally calibrated numerical model. A neural-network is trained to detect phase errors based on interference pattern recognition of uncombined beams adjacent to the combined one. Due to the non-uniqueness of solutions in the full space of possible phases, the network is trained within a limited phase perturbation/error range. This also reduces the number of samples needed for training. Simulations have proven that the network can converge in one step for small phase perturbatio...
Phase-only spatial light modulators are ideal for the generation of beam splitter profiles to parall...
In this chapter, machine learning (ML) algorithm is introduced in single-step perturbation and multi...
Recent studies have shown convolutional neural networks (CNNs) can be trained to perform modal decom...
An 8-beam, diffractive coherent beam combiner is phase controlled by a learning algorithm trained wh...
Coherent beam combination of multiple fibres can be used to overcome limitations such as the power h...
We analyze a new kind of machine learning algorithm designed to feedback stabilize coherently combin...
We demonstrate a new method for controlling diffractive, high-power beam combination, sensing phase ...
We have generated 81 independently controllable beams using a spatial light modulator and combined t...
This work studies algorithms for the dynamic phase control of an array of laser beams. The main inte...
International audienceAn innovative scheme is proposed for the dynamic phase control of laser beam a...
International audienceWe report a coherent beam combining technique using a specific quasi-reinforce...
Practical application of coherent beam combination of multiple fibres necessitates phase identificat...
Liquid crystal on silicon phase-only spatial light modulators are widely used for the generation of ...
Most of the neural networks proposed so far for computational imaging (CI) in optics employ a superv...
Increasing the number of laser beams that can be coherently combined requires accurate and fast algo...
Phase-only spatial light modulators are ideal for the generation of beam splitter profiles to parall...
In this chapter, machine learning (ML) algorithm is introduced in single-step perturbation and multi...
Recent studies have shown convolutional neural networks (CNNs) can be trained to perform modal decom...
An 8-beam, diffractive coherent beam combiner is phase controlled by a learning algorithm trained wh...
Coherent beam combination of multiple fibres can be used to overcome limitations such as the power h...
We analyze a new kind of machine learning algorithm designed to feedback stabilize coherently combin...
We demonstrate a new method for controlling diffractive, high-power beam combination, sensing phase ...
We have generated 81 independently controllable beams using a spatial light modulator and combined t...
This work studies algorithms for the dynamic phase control of an array of laser beams. The main inte...
International audienceAn innovative scheme is proposed for the dynamic phase control of laser beam a...
International audienceWe report a coherent beam combining technique using a specific quasi-reinforce...
Practical application of coherent beam combination of multiple fibres necessitates phase identificat...
Liquid crystal on silicon phase-only spatial light modulators are widely used for the generation of ...
Most of the neural networks proposed so far for computational imaging (CI) in optics employ a superv...
Increasing the number of laser beams that can be coherently combined requires accurate and fast algo...
Phase-only spatial light modulators are ideal for the generation of beam splitter profiles to parall...
In this chapter, machine learning (ML) algorithm is introduced in single-step perturbation and multi...
Recent studies have shown convolutional neural networks (CNNs) can be trained to perform modal decom...