Self-Sensing Characterization of GNP and Carbon Black Filled Cementitious Composites

Zhangfan Jiang, O. Ozbulut, G. Xing
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引用次数: 2

Abstract

Over the past decades, a number of structural health monitoring methods have been developed for condition assessment of concrete structures. Most of these methods require the installation of external sensors. Accelerometers are commonly used for vibration-based damage detection for the entire structure, while strain gauges are installed in order to detect cracking and damage at the component level. Conventional strain sensors, such as metal foil strain gauges, have been widely used to monitor local conditions in concrete structures. However, all of these sensors have certain shortcomings such as exhibiting limited durability and low gauge factor, and providing only pointwise strain measurements. Multifunctional cement-based composites that can determine their own strain and damage can overcome the limitations of these traditional sensors. This study explores the use of two different nanomaterials, namely graphene nanoplatelets (GNP) and carbon black (CB) for the development of self-sensing cementitious composites and the synergetic effects in their hybrid utilization. A simple fabrication method that does not require special treating procedures such as ultrasonication for dispersing nanomaterials is pursued. Twelve batches of mortar specimens reinforced with only GNP or CB at different concentrations, or with both GNP and CB fillers are prepared. A polycarboxylate-based superplasticizer is used to disperse nanomaterials and to increase the workability of the nano-reinforced mortar. Scanning electron microscope (SEM) is utilized to assess the distribution quality of nanomaterials. Standard cubic specimens are tested for compressive strength at 28 days. The bulk resistivity of the standard prismatic specimens is measured using the four-point probe method. The piezoresistive response of nano-reinforced cement composites is evaluated under the cyclic compressive loads.
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国产GNP和炭黑填充胶凝复合材料的自传感特性
在过去的几十年里,许多结构健康监测方法被开发出来用于混凝土结构的状态评估。这些方法大多需要安装外部传感器。加速度计通常用于对整个结构进行基于振动的损伤检测,而应变片则用于检测部件级别的开裂和损伤。传统的应变传感器,如金属箔应变片,已广泛用于监测混凝土结构的局部状况。然而,所有这些传感器都有一定的缺点,例如耐久性有限,测量系数低,并且只能提供点应变测量。多功能水泥基复合材料可以自行确定其应变和损伤,可以克服这些传统传感器的局限性。本研究探讨了使用两种不同的纳米材料,即石墨烯纳米片(GNP)和炭黑(CB)来开发自传感胶凝复合材料,以及它们在混合利用中的协同效应。一种简单的制造方法,不需要特殊的处理程序,如超声分散纳米材料。制备了12批仅添加不同浓度GNP或CB,或同时添加GNP和CB填料的砂浆试件。聚羧酸基高效减水剂用于分散纳米材料,提高纳米增强砂浆的和易性。利用扫描电子显微镜(SEM)评价纳米材料的分布质量。标准立方体试样在28天的抗压强度测试。采用四点探针法测量标准棱柱体试样的体电阻率。研究了纳米增强水泥复合材料在循环压缩载荷作用下的压阻响应。
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