Multiscale Image Based Modelling of Plant-Soil Interaction
Abstract
We rely on soil to support the crops on which we depend. Less obviously we also rely on soil for a host of 'free services' from which we benefit. For example, soil buffers the hydrological system greatly reducing the risk of flooding after heavy rain; soil contains very large quantities of carbon, which would otherwise be released into the atmosphere where it would contribute to climate change. Given its importance it is not surprising that soil, especially its interaction with plant roots, has been a focus of many researchers. However the complex and opaque nature of soil has always made it a difficult medium to study.
In this talk I will show how we can build a state of the art image based model of the physical and chemical properties of soil and soil-root interactions, i.e., a quantitative, model of the rhizosphere based on fundamental scientific laws.
This will be realised by a combination of innovative, data rich fusion of structural and chemical imaging methods, integration of experimental efforts to both support and challenge modelling capabilities at the scale of underpinning bio-physical processes, and application of mathematically sound homogenisation/scale-up techniques to translate knowledge from rhizosphere to field scale. The specific science questions I will address with these techniques are: (1) how does the soil around the root, the rhizosphere, function and influence the soil ecosystems at multiple scales, (2) what is the role of root- soil interface micro morphology on plant nutrient uptake, (3) what is the effect of plant exuded mucilage on the soil morphology, mechanics and resulting field and ecosystem scale soil function and (4) how to translate this knowledge from the single root scale to root system, field and ecosystem scale in order to predict how the climate change, different soil management strategies and plant breeding will influence the soil fertility.
Inference of risk-neutral joint-distributions in commodity markets using neural-networks
Abstract
The questions we would like to answer are as follows:
- Given three distributions pdf1, pdf2 and pdf-so, is it always possible to find a joint-distribution consistent with those 3 one-dimensional distributions?
- Assuming that we are in a situation where (1) holds, can we find a nonparametric joint-distribution consistent with the 3 given one-dimensional distributions?
- If (2) leads to an under-determined problem, can we find a joint-distribution that is “as close as possible” to the historical joint distribution?
- Can we achieve (3) with a neural network?
- If we observe the marginal and spread distributions for multiple maturities T, can we specify the evolution of pdf(T), possibly using neural differential equations?
Using advanced mathematical methods for improving our domestic lives
Whilst domestic appliances or white goods are a standard product in our everyday lives, the technology areas that have been developed to achieve high performance and efficiency at low cost are numerous. Beko’s parent company, Arcelik, have a research campus that includes teams working on fluid dynamics, thermodynamics, materials science, data analytics, IOT, electronics amongst many others.
Abstract
We would like to share two challenges that, if solved, could improve our domestic lives.
Firstly, having appliances that are as unobtrusive as possible is a strong desire, unwanted noise can cause a negative impact on relaxation. A key target for refrigerators is low sound level, a key noise source is the capillary tube. The capillary tube effects the phase change that is required for the refrigerant to be in the gaseous state in the evaporator for cooling. Noise is generated during this process due to two phases being present within the flow through the tube. The challenge is to create a numerical model and analysis of refrigerant flow properties in order to estimate the acoustic behaviour.
Secondly, we would like to maximise the information that can be gathered from our new range of connected devices. By analysing the data generated during usage we would like to be able to predict faults and understand user behaviour in more detail. The challenge regarding fault prediction is the scarcity of the failure data and the impact of false positives. Due to the number of units in the field, a relatively small fraction of false positives can remove the ROI from such an initiative. We would like to understand if advanced machine learning methods can be used to reduce this risk.