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Here, we present a protocol to develop colorimetric gas sensors using a robotic-based Design-Build-Test-Learn (DBTL) approach. This protocol integrates high-throughput automation, machine learning, and multi-objective optimization to efficiently discover and optimize sensor formulations for detecting gases like CO2, enabling rapid, cost-effective, and precise sensor development.
This paper presents a robot-based experimental program aimed at developing an efficient and fast colorimetric gas sensor. The program employs an automated Design-Build-Test-learning (DBTL) approach, which optimizes the search process iteratively while optimizing multiple recipes for different concentration intervals of the gas. In each iteration, the algorithm generates a batch of recipe suggestions based on various acquisition functions, and with the increase in the number of iterations, the values of weighted objective function for each concentration interval significantly improve.
The DBTL method begins with parameter initialization, setting up the hardware and software environment. Baseline tests establish performance standards. Subsequently, the DBTL method designs the following round of optimization based on the proportion of recipes in each round and tests performance iteratively. Performance evaluation compares baseline data to assess the effectiveness of the DBTL method. If the performance improvement does not meet expectations, the method will be performed iteratively; if the objectives are achieved, the experiment concludes. The entire process maximizes system performance through the DBTL iterative optimization process.
Compared to the traditional manual developing process, the DBTL method adopted by this experimental process uses multi-objective optimization and various machine learning algorithms. After defining the upper and lower limits of component volume, the DBTL method dynamically optimizes iterative experiments to obtain the optimal ratio with the best performance. This method greatly improves efficiency, reduces costs, and performs more efficiently within the multi-formulation variable space when finding the optimal recipe.
The practical applications of gas sensors are very extensive and have been used in various fields such as environmental monitoring, aerospace, and waste gas treatment1,2,3. The working principle of gas sensors typically relies on multiple mechanisms, such as electrochemistry, gas chromatography, and optical. Among many detection mechanisms, one based on color change has evolved into an acid-base mechanism that stands out uniquely. Due to its low cost and simple application, it is widely used in the design of many portable and disposable gas sensors, such as CO2 sensors1,4,5. This type of sensor uses the color change of certain chemicals to detect gas concentrations. When the gas concentration changes, it causes the sensor material to experience chemical reactions such as ionic complexation or indicator color changes, leading to the change in color of the gas-sensitive dye6. By detecting and analyzing the changes in color, the gas concentration can be measured indirectly. Meanwhile, despite the advantages of low cost and portability, this type of sensor still has some shortcomings, such as a long development cycle and low efficiency7,8,9. At the same time, traditional methods of sensor design struggle to meet multiple sensing characteristics simultaneously, such as achieving the required response time, reversibility, and detection limit. Under the traditional research and development paradigm, these difficulties severely hinder the production and widespread application of colorimetric gas sensors.
In response to the above-mentioned challenges in on-demand research and development, the colorimetric sensor technology developed through this experimental process can address some of the shortcomings of traditional gas sensing. By employing an iterative Design-Build-Test-learning (DBTL) approach10,11, the efficiency of sensor development can be significantly improved, thereby reducing the research and development time and effectively meeting the needs of the research and development1,12. In a typical DBTL development setup, the development of new materials is taken as an iterative feedback loop. The loop contains four key steps: 1. Design of the optimization parameters, targets, and sample the parameter space for a trial experiment; 2. Build the samples of the selected parameters; 3. Test the target value for the built samples; 4. Machine Learning analysis of the target feedback to guide the selection of next batch parameters. In this iterative process, the high-throughput experiment platform that allows for fast building and testing of samples, and the machine learning algorithms are the key components. The automated high-throughput testing platform can simultaneously test up to 384 sensing units, collecting a large amount of high-quality response data. By utilizing machine learning algorithms13,14,15,16,17, such as multi-objective Bayesian optimization, multiple sensing metrics of the sensing units (e.g., sensitivity, response time, and reversibility) can be simultaneously and automatically optimized, thereby improving the overall performance of various sensing characteristics. The sensing unit recipes generated by the optimization algorithm can achieve quantitative CO2 concentration detection without individual calibration, and the root mean square error (RMSE) metric can also meet the required indicators.
Our program is an experimental procedure developed based on colorimetric gas sensing (see Figure 1 for the flowchart). With the development of self-driven labs, the automated DBTL approach has shown excellent prospects due to its high efficiency, speed, and repeatability5,12. The traditional manual development process involves the adjustment of one variable at a timeThe traditional manual development process involves adjusting one variable at a time, followed by modifying another variable to optimize the target parameter and achieve the desired outcome. The primary drawbacks of this process include low efficiency in manual experiments, susceptibility to human error, difficulty in managing multi-dimensional variables in complex high-dimensional scenarios, and a tendency to get stuck in local optima. Compared to the manual development process, the DBTL method adopted in this experimental program uses robotics combined with advanced active learning algorithms such as multi-objective Bayesian optimization. Bayesian optimization is a probabilistic approach for optimizing expensive-to-evaluate objective functions15,18. It builds a surrogate model, often a Gaussian process, to approximate the objective function and uses an acquisition function to decide the next point to sample. The acquisition function balances exploration (searching less-sampled regions) and exploitation (refining known high-performing regions) to efficiently find the global maximum or minimum. This method is particularly useful in high-dimensional, non-convex search spaces where traditional optimization techniques struggle. After roughly defining the upper and lower limits of component content, it dynamically optimizes experiments to obtain the optimal ratio with the best performance iteratively. This method greatly improves efficiency and reduces costs and performs more efficiently within the multi-variable space for developing the optimal recipe5,12.
The overall goal of this article is to establish an experimental procedure based on the automated DBTL method through various computer technologies such as machine learning, multi-object Bayesian optimization, and experimental testing platforms, including the automated liquid handling platform and high-throughput gas testing platform. This will enable the design and research of colorimetric gas sensors. The customized "Opentrons OT-2" liquid handling robot platform is used to complete experiments according to program settings, automatically carrying out steps such as recipe synthesis, mixing, and dipping. The homemade high-throughput gas testing platform is used for gas testing and colorimetric sensor reading in a high-throughput manner, precisely controlling the concentrations of target gases and recording the color changes of the sensing units in real time. Compared with other experimental systems designed based on DBTL, this system has a relatively low hardware cost. Simultaneously, we have partially addressed the aspects of the task that involve human error through a semi-automated approach. providing the maximum marginal benefit while retaining the advantages of DBTL design.
1. Preliminary experiment (feasibility test)
NOTE: Based on Zhang's paper8, the relevant variables of chemical colorimetric sensors for the target gas, such as carbon dioxide, can be selected. Before performing the on-demand optimization of the colorimetric sensor formulations, a preliminary experiment using the following procedures can be conducted to establish the variable space.
2. Utilize a robotic experimental platform to conduct the Design-Build-Test-Learn (DBTL) iterative optimization process
3. Construction and characterization of the optimal colorimetric sensor array
4. Calibration of the colorimetric sensor array
A typical example of this experimental setup is the "Wide-Range High-Sensitivity Colorimetric CO2 Sensor Array"12. First, the experiment generates a chart based on the change in ΞE over time at a fixed CO2 concentration after Bayesian multi-objective optimization (Figure 7A). Based on its poor response time, ΞE, and reversibility, unnecessary 1 (slow response time), unnecessary 2 (non-responsive), and unnecessary 3 (baseline dri...
This article proposes an experimental design that can develop colorimetric gas sensors more quickly and accurately. This experimental process can be used to develop colorimetric sensors for various gases, such as humidity, CO2, and ammonia1,4,5. Through the method of this platform, it can meet the needs of users with various preferences, such as high sensitivity, low detection limit, required response time, considerin...
The authors have no conflicts of interest to declare.
This work is supported by the Natural Science Foundation of Zhejiang Province (LQ24F040006) and startup fund of Shenzhen University of Advanced Technology.
Name | Company | Catalog Number | Comments |
96-Well Deep Well Plate | NEST | NEST 2 mL 96-Well Deep Well Plate, V Bottom | |
96-Well PCR Plate | NEST | NEST 0.1 mL 96-Well PCR Plate | |
cresol red | sigma aldrich | 1.05225 | Dyes for colorimetric reagents |
Ethyl cellulose | sigma aldrich | 200689 | Dyes for colorimetric reagents |
Ethyl cellulose | Aladdin | E110670-100g | Additive |
Industrial Camera | HKVision | MV-CS060-10UM/C-PRO | used for recording color changes |
Liquid handler | Opentrons | OT2 | liquid handler |
Mass Flow Controller | ASERT | AST10-DLCMX-500C-042-A2B2-48VY | used in controlling analytes gas mixtures |
m-cresol purple | sigma aldrich | 1.05228 | Dyes for colorimetric reagents |
Opentrons OT-2 Tips | Opentrons | OT-2 Tips, 300Β΅L | |
Opentrons OT-2 Tips | Opentrons | OT-2 Tips, 20Β΅L | |
phenol red | sigma aldrich | 1.07241 | Dyes for colorimetric reagents |
polyethylene glycol | sigma aldrich | P1458 | Dyes for colorimetric reagents |
PTFE film | Interstate Specialty Products | PM15M | PTFE mambrane |
Tetrabutylammonium hydroxide | sigma aldrich | 86854 | Base for colorimetric reagents |
thymol blue | sigma aldrich | 1.08176 | Dyes for colorimetric reagents |
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