Optimization Design of CMUT Sensors with Broadband and High Sensitivity Characteristics Based on the Genetic Algorithm
Abstract
:1. Introduction
2. The Theory and Finite Element Model of CMUT Sensors
2.1. The Structure and Working Principle of CMUT Microelement
2.2. Theory Model of CMUT Microelement
2.3. Finite Element Model of CMUT Microelement
3. Introduction to the Genetic Algorithm and Its Application in the Optimization Design of MEMS Devices
3.1. Introduction to the Genetic Algorithm
- (1)
- Population initialization: A set of initial solutions is randomly generated within the search space, constituting what is known as the population. Each individual within the population represents a potential solution to the problem at hand;
- (2)
- Fitness evaluation: The fitness of each individual within the population is computed, reflecting the quality of the solution to the problem. The fitness function, typically tailored to the specific situation, quantifies the quality of each solution;
- (3)
- Selection: Utilizing the fitness values of individuals, specific individuals are chosen as parents to generate the next generation. Individuals with higher fitness are more likely to be selected, mirroring the principle of ‘survival of the fittest’ observed in nature;
- (4)
- Crossover: Two individuals are selected from the chosen parent population, and new individuals, termed offspring, are generated through a crossover operation (such as single-point crossover or multi-point crossover). This process simulates genetic crossover and recombination;
- (5)
- Mutation: Random mutation operations are applied to individuals within the offspring, altering the values of specific genes. These mutation operations aid in introducing new gene combinations and enhancing the diversity of the population;
- (6)
- Replacement: the newly generated offspring replace the original individuals, forming a new generation of the population;
- (7)
- Iterative evolution process: Through repeated iterations of selection, crossover, mutation, and replacement operations, individuals within the population undergo gradual optimization. Their fitness improves continuously, leading to the eventual discovery of an approximate optimal solution to the problem;
- (8)
- Termination criteria: The termination criteria denote when to cease the evolutionary process. These criteria can include reaching a specified number of iterations, discovering solutions that meet predetermined fitness thresholds, or reaching the end of a designated duration.
3.2. The Application of Genetic Algorithms in the Optimization Design of MEMS Devices
4. Optimization Design Method of CMUT Array Element Based on the Genetic Algorithm
4.1. Optimizing Problem Description and Steps of the Genetic Algorithm
- (1)
- Determine the independent variables of the algorithm. Given practical process limitations, the structural parameters of various layers of materials, membrane thickness, cavity height, etc., of the CMUT microelement are typically predetermined. Under these conditions, theoretical formulas derived in Chapter 2 indicate that the resonant frequency of the CMUT microelement is solely determined by the radius of each microelement and its respective DC bias voltage. Considering practical processes, it is imperative to maintain uniformity in the DC bias voltage across microelements within the CMUT array element. Hence, the independent variables of the genetic algorithm encompass each microelement’s radius (r1, r2, r3, r4) and the uniform DC bias voltage (Vdc).
- (2)
- Determine the range of independent variables. Given that the optimized array element is divided into four regions of 2 × 2, each microelement’s radius (r1, r2, r3, r4) must be less than or equal to 75 μm. Furthermore, according to Equation (15), the uniform DC bias voltage (Vdc) should be less than or equal to the minimum collapse voltage of each microelement.
- (3)
- Determine the fitness function in the algorithm. In this case, the optimization objective is to determine the arrangement of the array element that yields the highest sensitivity based on the expected bandwidth indicator. Accordingly, the total sensitivity of the array element is selected as the fitness function to maximize its value. Within the CMUT array element, each microelement operates in parallel mode, leading to the total output current being the linear superposition of the current responses of individual microelements. Therefore, according to Equation (18), the total sensitivity of the array element is the linear superposition of the sensitivities of each microelement. Consequently, the fitness function for the genetic algorithm is as follows, where S1–S4 are computed via Equation (18):
- (4)
- Determine the operational parameters of the algorithm. The population size is set to 100, and the number of chromosome nodes is set to 5. For the crossover and mutation processes, the algorithm utilizes a threshold-setting approach. Both the crossover and mutation thresholds are set to 0.2. The termination criterion of the algorithm reaches a certain number of iterations, set to 100 iterations.
- (5)
- Add additional constraints. We aim to achieve a flatter sensitivity curve for the optimized CMUT within the passband (i.e., the designated bandwidth target). Thus, minimizing the sensitivity variance within the passband as much as possible is imperative.
- (6)
- Executing the genetic algorithm to derive optimized independent variable results and conducting corresponding finite element simulation verification.
4.2. Optimization Results and Finite Element Simulation Verification
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Radius/Length (μm) | Thickness/Width (μm) | Material | |
---|---|---|---|
Top electrode | 34 | 0.2 | Aluminium |
Film | 68 | 2.6 | Doped silicon |
Cavity | 64 | 0.24 | Vacuum |
Insulation layer | 68 | 0.1 | Silica |
Substrate | 68 | 0.4 | Doped silicon |
Environment | 2000 | 1000 | Water |
r1 (μm) | r2 (μm) | r3 (μm) | r4 (μm) | Vdc (V) |
---|---|---|---|---|
74.42 | 68.86 | 60.14 | 50.67 | 60.55 |
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Zhang, S.; Lu, W.; Wang, A.; He, H.; Wang, R.; Zhang, W. Optimization Design of CMUT Sensors with Broadband and High Sensitivity Characteristics Based on the Genetic Algorithm. Sensors 2024, 24, 3155. https://doi.org/10.3390/s24103155
Zhang S, Lu W, Wang A, He H, Wang R, Zhang W. Optimization Design of CMUT Sensors with Broadband and High Sensitivity Characteristics Based on the Genetic Algorithm. Sensors. 2024; 24(10):3155. https://doi.org/10.3390/s24103155
Chicago/Turabian StyleZhang, Sai, Wentao Lu, Ailing Wang, Huizi He, Renxin Wang, and Wendong Zhang. 2024. "Optimization Design of CMUT Sensors with Broadband and High Sensitivity Characteristics Based on the Genetic Algorithm" Sensors 24, no. 10: 3155. https://doi.org/10.3390/s24103155
APA StyleZhang, S., Lu, W., Wang, A., He, H., Wang, R., & Zhang, W. (2024). Optimization Design of CMUT Sensors with Broadband and High Sensitivity Characteristics Based on the Genetic Algorithm. Sensors, 24(10), 3155. https://doi.org/10.3390/s24103155