The best performing color space and machine learning regression algorithm for the accurate estimation of chromium (VI) and iron (III) in aqueous samples using low-cost and portable flatbed scanner colorimetry

IF 2.2 4区 化学 Q3 CHEMISTRY, MULTIDISCIPLINARY
Chairul Ichsan, Siti Rodiah
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引用次数: 0

Abstract

The study utilizes the colorimetric method (involving 1,5-diphenylcarbazide and potassium thiocyanate as complexing agents), computer vision, and machine learning (ML) regression algorithms to determine the content of Cr (VI) and Fe (III) in water samples. To process digital images of water samples, the integration technique utilized a flatbed scanner known as the CanoScan LiDE 100, operating as a digital image capture device, and its performance was compared to that of conventional instruments. The study reveals that PolyReg and SVR-Poly are the most reliable ML regression algorithms for processing color space data (G and B of RGB, c* of CIELch, and b* of CIELab) of digital images of water samples that contain Cr (VI) and Fe (III). The mean absolute percentage error (MAPE) of the ML regression algorithms PolyReg and SVR-Poly for determining the content of Cr (VI) and Fe (III) is < 10% (with 8.48% error for Cr (VI) determination using PolyReg G of RGB and 6.78% error for Fe (III) determination using PolyReg B of RGB) in the estimation algorithm model. The Mean Absolute Percentage Error (MAPE) indicates that the prediction method is highly accurate. The Limit of Detection (LOD) value of the flatbed scanner colorimetric method integrated with PolyReg G of Red–Green–Blue (RGB) for Chromium (VI) and Blue of RGB for Iron (III) is approximately 0.02 mg/L. The Limit of Detection (LOD) for Chromium (VI) and Iron (III) is 0.0209 mg/L and 0.0257 mg/L, respectively. The limit of detection (LOD) values from this technique are superior to those obtained from certain UV–vis spectrometric and colorimetric methods. The low LOD values demonstrate that this technique is suitable for estimating the concentration of Cr (VI) and Fe (III) in water samples for quality assessment purposes, as these values are below the maximum concentration levels established by various regulations, including US-EPA, ASEAN, and EECCA.

Graphical abstract

Abstract Image

利用低成本便携式平板扫描仪比色法准确估算水样中铬(VI)和铁(III)的最佳色彩空间和机器学习回归算法
该研究利用比色法(涉及作为络合剂的 1,5-二苯基卡巴肼和硫氰酸钾)、计算机视觉和机器学习回归算法来确定水样中六价铬和三价铁的含量。为了处理水样的数字图像,该集成技术利用了被称为 CanoScan LiDE 100 的平板扫描仪作为数字图像捕获设备,并将其性能与传统仪器进行了比较。研究表明,PolyReg 和 SVR-Poly 是处理含六价铬和三价铁水样数字图像的色彩空间数据(RGB 的 G 和 B、CIELch 的 c* 和 CIELab 的 b*)的最可靠的 ML 回归算法。在估计算法模型中,用于确定铬(VI)和铁(III)含量的 ML 回归算法 PolyReg 和 SVR-Poly 的平均绝对百分比误差(MAPE)为 <10%(使用 RGB 的 PolyReg G 测定铬(VI)的误差为 8.48%,使用 RGB 的 PolyReg B 测定铁(III)的误差为 6.78%)。平均绝对百分比误差 (MAPE) 表明预测方法非常准确。平板扫描仪比色法与红-绿-蓝(RGB)PolyReg G 结合测定铬(VI)和 RGB 蓝色测定铁(III)的检出限(LOD)值约为 0.02 毫克/升。铬 (VI) 和铁 (III) 的检测限分别为 0.0209 mg/L 和 0.0257 mg/L。该技术的检测限(LOD)值优于某些紫外可见光谱法和比色法。较低的检出限值表明,该技术适用于估算水样中六价铬和铁(III)的浓度,以进行水质评估,因为这些值低于各种法规(包括美国环保局、东盟和东欧和中亚经济共同体)规定的最大浓度水平。
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来源期刊
CiteScore
4.40
自引率
8.30%
发文量
230
审稿时长
5.6 months
期刊介绍: JICS is an international journal covering general fields of chemistry. JICS welcomes high quality original papers in English dealing with experimental, theoretical and applied research related to all branches of chemistry. These include the fields of analytical, inorganic, organic and physical chemistry as well as the chemical biology area. Review articles discussing specific areas of chemistry of current chemical or biological importance are also published. JICS ensures visibility of your research results to a worldwide audience in science. You are kindly invited to submit your manuscript to the Editor-in-Chief or Regional Editor. All contributions in the form of original papers or short communications will be peer reviewed and published free of charge after acceptance.
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