Abstract

Abstract. Although in situ measurements in modern frequently occurring turbidity currents have been performed, the flow characteristics of turbidity currents that occur only once every 100 years and deposit turbidites over a large area have not yet been elucidated. In this study, we propose a method for estimating the paleo-hydraulic conditions of turbidity currents from ancient turbidites by using machine learning. In this method, we hypothesize that turbidity currents result from suspended sediment clouds that flow down a steep slope in a submarine canyon and into a gently sloping basin plain. Using inverse modeling, we reconstruct seven model input parameters including the initial flow depth, the sediment concentration, and the basin slope. A reasonable number (3500) of repetitions of numerical simulations using a one-dimensional layer-averaged model under various input parameters generates a dataset of the characteristic features of turbidites. This artificial dataset is then used for supervised training of a deep-learning neural network (NN) to produce an inverse model capable of estimating paleo-hydraulic conditions from data on the ancient turbidites. The performance of the inverse model is tested using independently generated datasets. Consequently, the NN successfully reconstructs the flow conditions of the test datasets. In addition, the proposed inverse model is quite robust to random errors in the input data. Judging from the results of subsampling tests, inversion of turbidity currents can be conducted if an individual turbidite can be correlated over 10 km at approximately 1 km intervals. These results suggest that the proposed method can sufficiently analyze field-scale turbidity currents.

Highlights

  • Turbidity currents are sediment-laden density flows that occur intermittently in deep-sea environments (Talling, 2014)

  • Numerous records of turbidity currents have been reported at locations such as Squamish Bay, Canada (Hughes Clarke, 2016), Monterey canyon offshore of California (Xu et al, 2004; Xu, 2010; Paull et al, 2018), and the Congo Submarine Channel (Vangriesheim et al, 2009; Azpiroz-Zabala et al, 2017)

  • Each bed is composed of four grain size classes

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Summary

Introduction

Turbidity currents are sediment-laden density flows that occur intermittently in deep-sea environments (Talling, 2014). Numerous records of turbidity currents have been reported at locations such as Squamish Bay, Canada (Hughes Clarke, 2016), Monterey canyon offshore of California (Xu et al, 2004; Xu, 2010; Paull et al, 2018), and the Congo Submarine Channel (Vangriesheim et al, 2009; Azpiroz-Zabala et al, 2017). These records have revealed that turbidity currents occur almost monthly in modern submarine environments (Paull et al, 2018). Ishihara et al (1997) investigated the deposits of the fore-arc basin (the Pliocene Awa Group) and reported that turbidite beds were deposited approximately once every 1200–1300 years. Clare et al (2014) analyzed

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