Bertocci Francesco, Fort Ada, Vignoli Valerio, Mugnaini Marco, Berni Rossella
Department of Information Engineering and Mathematics, University of Siena, Via Roma 56, 53100 Siena, Italy.
Department of Statistics, Computer Science, Applications "G. Parenti", University of Florence, Viale Morgagni 59, 50134 Florence, Italy.
Sensors (Basel). 2017 Jun 10;17(6):1352. doi: 10.3390/s17061352.
Eight different types of nanostructured perovskites based on YCoO 3 with different chemical compositions are prepared as gas sensor materials, and they are studied with two target gases NO 2 and CO. Moreover, a statistical approach is adopted to optimize their performance. The innovative contribution is carried out through a split-plot design planning and modeling, also involving random effects, for studying Metal Oxide Semiconductors (MOX) sensors in a robust design context. The statistical results prove the validity of the proposed approach; in fact, for each material type, the variation of the electrical resistance achieves a satisfactory optimized value conditional to the working temperature and by controlling for the gas concentration variability. Just to mention some results, the sensing material YCo 0 . 9 Pd 0 . 1 O 3 (Mt1) achieved excellent solutions during the optimization procedure. In particular, Mt1 resulted in being useful and feasible for the detection of both gases, with optimal response equal to +10.23% and working temperature at 312 ∘ C for CO (284 ppm, from design) and response equal to -14.17% at 185 ∘ C for NO 2 (16 ppm, from design). Analogously, for NO 2 (16 ppm, from design), the material type YCo 0 . 9 O 2 . 85 + 1 % Pd (Mt8) allows for optimizing the response value at - 15 . 39 % with a working temperature at 181 . 0 ∘ C, whereas for YCo 0 . 95 Pd 0 . 05 O 3 (Mt3), the best response value is achieved at - 15 . 40 % with the temperature equal to 204 ∘ C.
制备了八种基于不同化学成分的YCoO₃的纳米结构钙钛矿作为气体传感器材料,并对它们进行了两种目标气体NO₂和CO的研究。此外,采用统计方法来优化它们的性能。通过裂区设计规划和建模进行创新贡献,其中还涉及随机效应,以便在稳健设计背景下研究金属氧化物半导体(MOX)传感器。统计结果证明了所提出方法的有效性;事实上,对于每种材料类型,电阻变化在工作温度条件下并通过控制气体浓度变化实现了令人满意的优化值。仅提及一些结果,传感材料YCo₀.₉Pd₀.₁O₃(Mt1)在优化过程中取得了优异的解决方案。特别是,Mt1对于两种气体的检测都是有用且可行的,对于CO(设计值284 ppm),最佳响应等于 +10.23%,工作温度为312℃;对于NO₂(设计值16 ppm),在185℃时响应等于 -14.17%。类似地,对于NO₂(设计值16 ppm),材料类型YCo₀.₉O₂.₈₅ + 1% Pd(Mt8)在工作温度为181.0℃时可将响应值优化至 -15.39%,而对于YCo₀.₉₅Pd₀.₀₅O₃(Mt3),在温度等于204℃时最佳响应值为 -15.40%。