School of Geography, Earth and Environmental Sciences, University of Birmingham, Birmingham B15 2TT, UK; Birmingham Institute of Forest Research, University of Birmingham, Birmingham B15 2TT, UK.
School of Geography, Earth and Environmental Sciences, University of Birmingham, Birmingham B15 2TT, UK; Birmingham Institute of Forest Research, University of Birmingham, Birmingham B15 2TT, UK.
Sci Total Environ. 2024 Sep 1;941:173450. doi: 10.1016/j.scitotenv.2024.173450. Epub 2024 May 25.
Conventional techniques for monitoring pollen currently have significant limitations in terms of labour, cost and the spatiotemporal resolution that can be achieved. Pollen monitoring networks across the world are generally sparse and are not able to fully represent the detailed characteristics of airborne pollen. There are few studies that observe concentrations on a local scale, and even fewer that do so in ecologically rich rural areas and close to emitting sources. Better understanding of these would be relevant to occupational risk assessments for public health, as well as ecology, biodiversity, and climate. We present a study using low-cost optical particle counters (OPCs) and the application of machine learning models to monitor particulate matter and pollen within a mature oak forest in the UK. We characterise the observed oak pollen concentrations, first during an OPC colocation period (6 days) for calibration purposes, then for a period (36 days) when the OPCs were distributed on an observational tower at different heights through the canopy. We assess the efficacy and usefulness of this method and discuss directions for future development, including the requirements for training data. The results show promise, with the derived pollen concentrations following the expected diurnal trends and interactions with meteorological variables. Quercus pollen concentrations appeared greatest when measured at the canopy height of the forest (20-30 m). Quercus pollen concentrations were lowest at the greatest measurement height that is above the canopy (40 m), which is congruent with previous studies of background pollen in urban environments. The attenuation of pollen concentrations as sources are depleted is also observed across the season and at different heights, with some evidence that the pollen concentrations persist later at the lowest level beneath the canopy (10 m) where catkins mature latest in the season compared to higher catkins.
传统的花粉监测技术在劳动力、成本和时空分辨率方面存在显著的局限性。世界各地的花粉监测网络通常比较稀疏,无法充分代表空气中花粉的详细特征。很少有研究在局部范围内观察浓度,甚至更少的研究是在生态丰富的农村地区和靠近排放源的地方进行的。更好地了解这些情况,对于公共卫生、生态学、生物多样性和气候方面的职业风险评估都具有重要意义。我们提出了一项使用低成本光学粒子计数器(OPC)和机器学习模型来监测英国成熟橡树林内颗粒物和花粉的研究。我们首先在 OPC 共置期间(6 天)进行校准,然后在 OPC 分布在观测塔不同高度的树冠内的观测期间(36 天),对观测到的橡花粉浓度进行特征描述。我们评估了这种方法的效果和实用性,并讨论了未来的发展方向,包括对训练数据的要求。结果表明,这种方法具有一定的前景,推导得出的花粉浓度与预期的昼夜趋势以及与气象变量的相互作用一致。当在森林树冠高度(20-30 米)处测量时,栎属花粉浓度最大。在最高测量高度(高于树冠 40 米)处,栎属花粉浓度最低,这与之前城市环境中背景花粉的研究结果一致。随着源花粉的耗尽,花粉浓度在整个季节和不同高度上都呈现出衰减的趋势,有证据表明,在树冠下最低的 10 米处,花粉浓度持续的时间更长,因为那里的柔荑花序在季节中成熟较晚,而较高的柔荑花序则更早成熟。