Multimode fiber (MMF) is an intricate and indispensable system that plays a pivotal role in a diverse array of applications, ranging from optical transmission
Opto-Electronic Science, Volume. 4, Issue 1, 240004(2025)
Tailoring temperature response for a multimode fiber
This work introduces special states for light in multimode fibers featuring strongly enhanced or reduced correlations between output fields in the presence of environmental temperature fluctuations. Using experimentally measured multi-temperature transmission matrix, a set of temperature principal modes that exhibit resilience to disturbances caused by temperature fluctuations can be generated. Reversing this concept also allows the construction of temperature anti-principal modes, with output profiles more susceptible to temperature influences than the unmodulated wavefront. Despite changes in the length of the multimode fiber within the temperature-fluctuating region, the proposed approach remains capable of robustly controlling the temperature response within the fiber. To illustrate the practicality of the proposed special state, a learning-empowered fiber specklegram temperature sensor based on temperature anti-principal mode sensitization is proposed. This sensor exhibits outstanding superiority over traditional approaches in terms of resolution and accuracy. These novel states are anticipated to have wide-ranging applications in fiber communication, sensing, imaging, and spectroscopy, and serve as a source of inspiration for the discovery of other novel states.
Introduction
Multimode fiber (MMF) is an intricate and indispensable system that plays a pivotal role in a diverse array of applications, ranging from optical transmission
Recently, transmission matrix (TM) has become a powerful tool for characterizing and controlling the propagation of light in complex but deterministic optical linear systems
In this work, we utilized a generalized Wigner-Smith operator constructed according to the multi-temperature transmission matrix of MMF to generate special optical states called temperature principal modes, using wavefront shaping techniques. Compared with the unmodulated incident beams, the temperature principal mode exhibits greater resistance to temperature-induced distortions of output speckle patterns. Furthermore, by reversing the concept, our approach can also be employed to generate temperature anti-principal mode with extremely narrow temperature bandwidth, which have potential applications in the field of optical fiber sensing. Experimental results have demonstrated that the learning-empowered fiber specklegram temperature sensor sensitized by the temperature anti-principal mode is significantly superior to traditional solutions in terms of resolution and demodulation accuracy. The proposed approach in this work holds promise for a wide range of applications in imaging, sensing, and communication, and is expected to serve as a universal framework for promoting to other multimode waveguides.
Methods
Temperature principal modes and anti-principal modes
The fidelity between the transmission matrix of the perturbed fiber and the reference matrix for the unperturbed configuration decreases quickly as the temperature ΔT increases. While temperature fluctuations can alter transmission characteristics, our objective is to identify a set of channels minimally affected by fluctuations in ambient temperature, which are referred to as the temperature principal modes. The temperature principal modes refer to a set of optical channels that exhibit remarkable resistance to temperature-induced distortions. Compared to unmodulated wavefronts, the temperature principal modes can enable the output field of a MMF to maintain high correlation over a wider temperature range. Here, we introduce a method based on the Wigner-Smith operator to calculate the temperature principal mode and temperature anti-principal mode in a MMF. In optical fibers, the Wigner-Smith operator Q can be expressed as
where
To provide a quantitative assessment, we describe the suppressive effect of the temperature principal mode on temperature-induced distortions by calculating the correlation function C. The correlation function C can be expressed as
where
To further enhance the bandwidth of the temperature principal mode, a loss function
It can be observed that by minimizing the value of the loss function
The temperature anti-principal modes are a set of optical channels that are more sensitive to temperature-induced distortion. Compared to the unmodulated wavefront (e.g. Gaussian beam), the speckle patterns generated by the temperature anti-principal mode exhibit a higher degree of decorrelation with each other under varying temperature conditions. Unlike the process for obtaining the optimized temperature principal mode, the temperature anti-principal mode can be easily obtained by maximizing the loss function
Experimental setup
As shown in
Figure 1.Schematics of the experimental setup. OBJ: microscopic objective (OBJ1: 20×, NA (numerical aperture) = 0.40; OBJ2: 40×, NA= 0.75); CCD: charge-coupled device camera; MMF: multimode fiber; SLM: spatial light modulator; P: polarizer; M: mirror; BS: beam splitter; L: lens.
Results
To construct the Wigner-Smith operator, we employed the interferometer illustrated in
Computer-generated phase holograms were loaded onto a SLM, and temperature principal modes and temperature anti-principal modes were constructed through amplitude and phase modulation. Corresponding output fields were recorded as the environmental temperature was scanned, and the correlation between the output-field patterns was calculated using
|
Figure 2.Calculated correlation function for output signals of the unmodulated wavefront (blue solid line), the temperature principal mode (red solid line) and the temperature anti-principal mode (green solid line).
Figure 3.Recorded intensity profiles of (
To explore the applicability of the proposed scheme, we further investigated scenarios with fiber lengths of 20 cm, 30 cm, 40 cm, and 50 cm in regions of temperature fluctuations. By recalibration, the proposed approach remains robust as the length of the fiber in the path increases.
Figure 4.Normalized bandwidth of the temperature principal mode and the temperature anti-principal mode for different fiber length.
To compare the effects of heating environments on the principal modes, we utilized both water bath heating and hot plate heating methods to generate the principal modes. When the length of the fiber in the temperature fluctuation region is 30 cm, the normalized bandwidths of the temperature principal modes generated by the water bath heating method and the hotplate heating method are 1.43 and 1.45, respectively, while the normalized bandwidths of the anti-principal modes are 0.64 and 0.62, respectively. The experimental results reveal that, with uniform temperature distribution inside the optical fiber ensured, the bandwidths of the principal and anti-principal modes obtained through both heating methods are similar.
Temperature principal mode can suppress temperature-induced distortions, which has potential applications in fields such as fiber optic spectrometers, imaging, and communication. On the other hand, the temperature anti-principal mode can enhance the response of fiber optic to external perturbations, and therefore holds promise for advancing the field of fiber optic sensing. Fiber optic sensors have been widely used in various fields due to their small size, high sensitivity, and resistance to electromagnetic interference. In the reported works, fiber specklegram sensors are considered as a promising candidate for widely applicable fiber sensing technologies due to their advantages of not requiring expensive sensor interrogation schemes or complex fabrication processes
Figure 5.Overview of learning empowered fiber specklegram temperature sensing schemes based on temperature anti-principal mode sensitization.
As a data-driven model, deep learning hinges on the solution space offered by the dataset to mine and comprehend the relationship between speckle patterns and sensing parameters. Therefore, the first step is to collect a large number of raw samples containing various configurations. In this work, the length of the multimode fiber in the sensing area is 10 cm, and the temperature surrounding the fiber is increased from 30 °C to 45 °C in steps of 1 °C. In this study, the temperature anti-principal mode was calculated and utilized as the incident wavefront. A total of 50 images were collected for each temperature group, with the collection process repeated four times to ensure data diversity. Consequently, a total of 16 different configurations were gathered, and each configuration was composed of 200 speckle patterns. The second step involved transforming the collected data into a dataset. To evaluate the predictive performance of the trained model on both learned and unlearned configurations, two different test sets were utilized, enabling a more accurate assessment of the generalization ability of the model. Specifically, 10 sets were randomly selected from the collected 16 groups and divided into Group B, while the remaining samples were assigned to Group A. Within Group A, the speckle patterns were split equally into training set A and testing set A, with a 1 : 1 ratio. The samples in Group B were designated as testing set B. The training set A was utilized to provide a solution space for the neural network to learn the evolution pattern between speckle patterns and temperature. The task of testing set A is to characterize the generalization ability of the trained model to the learned configurations. Testing set B, on the other hand, comprised of samples collected from unlearned configurations, which was employed to further evaluate the feasibility and robustness of the proposed approach. To provide a comparative analysis of the enhanced sensitivity of the temperature anti-principal mode, another set of datasets was constructed following the same procedure, with the unmodulated wavefront as the illuminating light.
Prior to training the model, preprocessing of the samples contained in the dataset is required. The collected speckle patterns are cropped into a 100×100 pixels window centered on the speckle, and then downsampled to 32×32 pixels. To reduce the computational complexity, principal component analysis (PCA) was employed to reduce the dimensionality of the samples. PCA is the most commonly used data dimensionality reduction algorithm, which can improve the learning efficiency and convergence speed of the model while preserving the abstract features of the samples as much as possible. However, in practical applications, it is necessary to carefully choose the dimensionality of the low-dimensional space, ensuring a balance between convergence speed and model accuracy. In this work, contribution rate is defined as the amount of data preserved in the direction of the principal component, while the cumulative contribution rate is defined as the ratio between the features contained in the low-dimensional space and those contained in the original space. As shown in
Figure 6.The contribution rate and cumulative contribution rate of principal components under different dimensions.
The training and validation of the model were conducted on a computer equipped with an i7-10857H CPU. The architecture of the back propagation (BP) neural network used in this work is 20-15-1, indicating that the number of neurons in the input layer, hidden layer, and output layer is 20, 15, and 1, respectively. The number of neurons in the input layer is equivalent to the dimensionality of the optimized feature space obtained via PCA algorithm. The number of neurons in the hidden layer is typically determined empirically based on the number of input and output layer neurons, and subsequently adjusted based on the training process. The PCA algorithm was used to perform data dimensionality reduction on all samples in the dataset, which took approximately 2 seconds. Subsequently, the BP neural network was trained on the preprocessed training set A for 1.1 seconds, with an initial learning rate of 0.01. To mitigate the uncertainty caused by sensitivity to initial values, a transfer learning approach was adopted. Specifically, weights from similar models trained in other speckle pattern demodulation works were extracted and used to initialize the model in this work. As a first step, the prediction accuracy of the trained model for the learned configurations was tested when illuminated with unmodulated wavefront and temperature anti-principal mode, respectively. The demodulation speed of the trained model is 0.007 milliseconds per frame. The testing results are depicted in
Figure 7.The trained deep learning model is used to predict learned configurations. (
In fact, it is impossible for the dataset to encompass all possible configurations, hence the generalization ability of the deep learning model towards unseen or unlearned configurations determines its applicability and feasibility. Testing set B includes samples collected from configurations that the model has not learned, which can be further utilized to evaluate the predictive accuracy of the trained model.
Figure 8.The trained deep learning model is used to predict unlearned configurations. (
The confusion in the deep learning model arises from its difficulty in distinguishing the speckle pattern changes caused by small temperature fluctuations under unmodulated wavefront illumination. Therefore, the fiber specklegram temperature sensor with unmodulated wavefront has limited resolution. In contrast, fiber specklegram temperature sensors with enhanced sensitivity using temperature anti-principal mode exhibit remarkable superiority for unlearned configurations, with an error range of ±0.4 °C and most errors concentrated around 0 °C. Fiber specklegram temperature sensors with temperature anti-principal mode sensitization demonstrate outstanding advantages in prediction accuracy, resolution, and stability. This is because the temperature anti-principal mode scheme can enhance the response of optical fiber to temperature-induced distortion, leading to significant fluctuations in the field distribution at the far end of the optical fiber with temperature changes. This makes it easier for deep learning models to distinguish changes in the speckle pattern caused by small temperature fluctuations.
For a comprehensive analysis, the performance of the fiber specklegram temperature sensor based on temperature principal modes was investigated, as depicted in
Figure 9.The performance of fiber specklegram temperature sensors based on temperature principal modes. (
To have a clearer understanding about the features of the previously proposed fiber specklegram temperature sensor based on regression neural network, a comparison is shown in
Discussion
In this work, we extend the concept of principal modes beyond frequency, presenting and experimentally generating temperature principal modes and temperature anti-principal modes for the first time. The temperature principal mode exhibits good resistance to temperature-induced distortion, while the temperature anti-principal mode has a narrower temperature bandwidth than the unmodulated wavefront. The normalized bandwidths of the temperature principal mode and temperature anti-principal mode are maintained at around 1.4 and 0.67, respectively. Without compromising the structural integrity of the fiber and without resorting to thermosensitive materials, we have effectively manipulated the temperature response within MMF solely through wavefront shaping techniques. Furthermore, the generation of temperature principal modes and temperature anti-principal modes has been demonstrated to be highly convenient, relying solely on multi-temperature transmission matrix and generalized Wigner-Smith operator. In this study, incomplete transmission matrices are used to generate temperature principal modes and temperature anti-principal modes. It can be observed from both the experimental results and previously reported works
Temperature-induced distortion is an issue that cannot be overlooked in engineering based on optical fiber speckle patterns. In such circumstances, the temperature principal modes stand out as a promising option, offering the capability to manipulate the temperature response within the MMF conveniently while preserving the structural integrity of the fiber. The temperature principal mode can suppress distortion induced by temperature fluctuations, yielding an output light field with minimal temperature sensitivity, making it highly promising for applications such as fiber optic spectrometers
Contrary to the temperature principal mode, the temperature anti-principal modes are a unique set of optical channels characterized by their heightened sensitivity to distortions induced by temperature fluctuations. The optimization strategy described earlier allows us to generate such highly sensitive state by just maximizing the functional in
The generation of temperature principal and anti-principal modes is solely dependent on the transmission matrices calibrated at different temperatures and the generalized Wigner-Smith operator, regardless of the type of fiber and the wavelength of the incident light. Therefore, our methodology, which involves the concepts of temperature principal mode and temperature anti-principal mode, as well as the ability to create complex fields through wavefront shaping, is not confined to any particular types of scattering systems or waveforms. We anticipate that our findings can be easily transferred to other experimental platforms or other complex media. It is noted that the original definition of the Wigner-Smith operator is dependent on the scattering matrix
In practical applications, generating temperature principal modes and temperature anti-principal modes in relatively longer fibers (for example, up to 1 km) presents challenges. When transmitting optical signals through a 1 km long MMF, the speckle intensity at the distal end of the fiber will change rapidly with time, even if the proximal input remains constant. This can be attributed to fluctuations of the vibration or airflow over the optical setup that induce slight perturbations on the fiber that become significant over its 1 km length. This perturbation leads to changes in the transmission matrix of the fiber, rendering the principal modes generated based on the original transmission matrix unsuitable for the perturbed fiber. Fortunately, research indicates that these perturbations are not entirely random and can be learned by models such as neural networks. Hence, we are optimistic about successfully generating temperature principal modes and anti-principal modes in relatively longer fibers.
The main sources of error in our work are attributed to the errors during transmission matrix calibration, imperfections in the optimization strategy, and the incompleteness of the transmission matrix. Our future work will focus on several aspects of improvement. The initial step involves further optimization of the experimental setup to reduce potential sources of systematic error. Subsequently, advanced optimization techniques, which are more efficient, problem-specific, and have better performance, are investigated to enhance temperature bandwidth. Finally, employing the more comprehensive multi-temperature vector transmission matrix
Conclusion
In summary, we have discovered a set of distinctive light states in multimode fibers that exhibit either enhanced robustness or heightened sensitivity to temperature-induced distortion compared to the unmodulated wavefronts. These states can be referred to as the temperature principal mode and temperature anti-principal mode, and can be generated based on experimentally-measured multi-temperature transmission matrices. The temperature principal mode can robustly increase the temperature bandwidth by approximately 40%, while the temperature anti-principal mode can reduce the temperature bandwidth to 67% of the unmodulated wavefront. To fully leverage the characteristics of the temperature anti-principal mode, a learning-empowered fiber specklegram temperature sensor based on temperature anti-principal mode sensitization is proposed. This sensor exhibits superior performance in both resolution and sensitivity compared to traditional solutions, and can be easily implemented without compromising the robustness of the fiber structure. Our method has potential applications in optical communication, imaging, and sensing, and can be easily extended to other multimode waveguides, providing an inspiring reference for exploring more novel states.
Acknowledgements
We are grateful for financial supports from the National Natural Science Foundation of China (62075132 and 92050202), Natural Science Foundation of Shanghai (22ZR1443100).
HF Hu proposed the original idea. H Gao fabricated the samples and performed the measurements. QW Zhan supervised the project.
The authors declare no competing financial interests.
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Han Gao, Haifeng Hu, Qiwen Zhan. Tailoring temperature response for a multimode fiber[J]. Opto-Electronic Science, 2025, 4(1): 240004
Category: Research Articles
Received: Jan. 26, 2024
Accepted: May. 13, 2024
Published Online: Mar. 24, 2025
The Author Email: Hu Haifeng (HFHu), Zhan Qiwen (QWZhan)