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The Process Sensing Group at NIST is investigating a range of fundamental and technological issues related to next-generation chemical and biochemical measurements with solid state devices. A significant portion of the research uses a basic micromachined platform, known as a microhotplate device to develop sensing materials and new methods for detection and quantitation of gases. The microhotplate contains a built-in heater, thermometer, and sensing film. It uses conductance changes in the sensing film to detect the presence of adsorbed gas species. Temperature changes may be used to alter the adsorption/desorption and reaction kinetics between the gas and sensor surface. Because of the small size, millisecond temperature changes in the range 20 °C to over 500 °C are used to create response "fingerprints" for different analytes. Surface analytical and microcharacterization methods are also used to investigate materials properties and mechanisms for sensing.
Our research is focused on the basic and applied aspects of chemical sensor science and technology in the following areas:
The research effort seeks to develop and integrate modular components of high-performance chemical sensors that include nanostructured sensing materials, multi-element microsensor arrays, advanced signal processing algorithms and novel sensor operational modes to yield a viable, generic and tunable sensor technology for broad application.
In materials research, we employed template-directed synthesis methods to prepare metal oxide nanotubes and nanowires. A novel sensor architecture based upon the nanotubes was prepared by using the template as a scaffold to support the nanotubes in a parallel alignment (Figure 1). Oxide nanowires, on the other hand, were released from their template and integrated with a microsensor array to compare them with a film-configured sensor as a function of sensor operating temperature and analyte. To compare the morphologically varied materials, we developed mathematical approaches involving cross-correlation techniques to visualize material- and temperature-dependent data that yield orthogonal information from chemical microsensor arrays.
Inspired by biological approaches for processing high-density data streams, we have developed a hierarchical method for acquiring and analyzing sensor data. Unlike "all-at-once" methods of signal- processing, the new approach selects optimal portions of the data to answer a series of relatively simple analytical questions that become increasingly precise (Figure 2a). We have also developed an "Event-Detection" method that employs a two-step approach using high dimensionality data to first detect whether a chemical event (such as the introduction of a trace amount of a dangerous chemical) has occurred via correlation calculations, and then apply recognition algorithms to identify the chemical, if necessary. Linear discriminant analysis (LDA) demonstrates the separability of three target analytes in untrained backgrounds (Figure 2b).
Additional Technical Details:
We have developed a tunable array-based microsensor technology that involves robust and manufacturable components. The design is CMOS-compatible for the development of monolithic circuits.
Lead Organizational Unit:mml