# A method to reduce the uncertainty of pressure prediction in HPHT prospects: a case study of Onshore Niger Delta depobelt, Nigeria

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## Abstract

The search for hydrocarbons has gone beyond shallow hydrostatic reservoirs, necessitating deep drilling beyond known depths in the mature Onshore Niger Delta fields. Often times, the challenge has been the ambiguity in pore pressure prediction beyond the shallow depths where disequilibrium compaction is no longer the active overpressure contributor. This leads to underbalanced drilling with the implication that well drilling is terminated at the occurrence of the first kick, before reaching the target depth. Thus, in this study, the dominant overpressure mechanism is determined by the analyses of velocity, density versus depth cross-plots. The Eaton empirical approach, equivalent depth method (EDM), a deterministic approach, and Bowers velocity–vertical effective stress (Vp–VES) relationship were applied to Vp-sonic log to compare prediction profiles. Pressure data were used to infer geologically consistent Eaton’s exponents and Vp–VES curve for loading and unloading scenarios. The results show that deeper than the approximately 11,000 ft where unloading began, EDM and Eaton’s exponent of 3.0 would fail. However, higher exponents can be adopted for the area at onset of unloading temperatures ranging from 98 to 100 °C. The estimated shale pressure profile from the EDM, Eaton’s exponents and Vp–VES models accurately fit the measured pressure data. In that way, the uncertainty in the prediction can be quantified. Hence, predrill estimates of shale pressures can be generated beyond known depths since the model can be used to transform seismic velocity to formation pressure, thereby ensuring better anticipation of potential risks and cost-effective drilling.

## Keywords

Onshore Niger Delta Abnormal pressure Kick Underbalanced Loading Unloading Velocity Vertical effective stress## Introduction

One of the key inputs to successful well planning is accurate pore pressure profile and it is more challenging in frontier areas with complex geology and where few offset wells exist beyond known depths. Such situations have left practitioners with no other option than to adapt existing models for pore pressure prediction work, which in some cases have led to underbalanced drilling with its attendant problems. According to Swarbrick and Osborne (1998), most basins around the world such as the young deltaic shale sequence of Niger Delta are abnormally pressured due to: (1) stress-related mechanisms (tectonism and disequilibrium compaction); (2) fluid expansion due to hydrocarbon generation, mineral transformation, etc.; and (3) fluid movement and buoyancy mechanisms (hydraulic head, osmosis, buoyancy due to density contrasts and lateral transfer).

Traditionally, the method of predicting the pressure of shale-rich rocks is to analyse seismic and well data, working with the principles that (a) high pressure is associated with higher than expected porosity; (b) the parameter used to capture porosity is of good quality with high data density; and (c) the only reason for the overpressure is disequilibrium compaction. The two main relationships used to quantify pore pressure are the (a) Eaton ratio method, an empirical approach in which Eaton provided constants for sonic velocity, resistivity and drilling exponent (Dxc) data, and (b) equivalent depth method, a deterministic approach, which is most commonly used with density and sonic velocity data. Ideally, pore pressure prediction practitioners will use both methods applied to several data types to compare prediction profiles. In that way, a measure of the uncertainty in the prediction can be usefully assessed.

However, the above methods are bound to fail where secondary mechanisms are responsible for generating the overpressure, hence the need for a different model based on velocity–vertical effective relationship (Bower’s 2001), so as to take care of secondary mechanisms that do not conform to the conventional approaches.

### Geological setting

## Theory and method

*P*p is the pore pressure;

*S*is the overburden stress;

*σ*

_{eff}is the vertical effective stress; and

*α*is the Biot effective stress coefficient. Biot’s coefficient is the ratio of the volume change of the fluid filled porosity to the volume change of the rock when the fluid is free to move out of the rock. It is conventionally assumed

*α*= 1 in many geopressure studies (Zhang, 2011; Azadpour et al. 2015). Bowers (2001), on the other hand, used an empirically determined method to calculate the effective pressure with the following relationship between the effective stress and sonic velocity for disequilibrium compaction setting:

*V*is the velocity at a given depth;

*V*

_{ 0 }is the surface velocity (normally 5000 ft/s);

*σ*is the vertical effective stress; and

*A*and

*B*are the parameters obtained from calibrating regional offset velocity versus effective stress data. In basins with the mechanism of unloading, Bowers proposed the following empirical relation to account for unloading effect:

*U*is the unloading parameter which is a measure of how plastic the sediment is.

*U*= 1 implies no permanent deformation and

*U*= ∞ corresponds to completely irreversible deformation.

*σ*

_{max}and

*V*

_{max}are the values of effective stress and velocity at the onset of unloading which is the maximum. Eaton (1975) introduced (Eq. 5) below is an empirical equation used for pore pressure prediction from sonic transit time:

*P*p is the pore pressure,

*S*

_{v}is the overburden pressure, Phydro is the hydrostatic pressure, \( \Delta t_{\text{obs}} \) is the observed sonic transit time in shale; \( \Delta t_{\text{norm}} \) is the sonic transit time in shale at the normal pressure condition obtained from normal trend line; and

*x*is the exponent constant which is originally 3 in Eaton’s study, based on data from wells in the shallow coastal areas of the Gulf of Mexico.

This study utilised wireline logs and drilling data from two onshore wells. The data were quality controlled and corrected for any inconsistency. GR cut-off value for shale varies from well to well and can be misleading especially on Onshore Niger Delta; thus, threshold was applied in addition to the GR API range. In this case, sand cut-offs were normally removed from the density log. The generated data are required input to enable proper interpretation and shale pressure estimation.

The cross-plot of *V*p versus Rho as modified by Swarbrick (2012) was used to check for secondary mechanism and complimentary to Lahann et al. (2001) plot. These can be used to distinguish overpressures generated by disequilibrium compaction from those generated by unloading mechanisms (Lahann et al. 2001). Normal compaction trend, overburden and hydrostatic pressure gradient were defined for the areas based on geology and fluid density. Eaton’s exponents were obtained by calibrating with the direct pressured measurements and by considering the overall overpressure system of the study area.

## Results

Eaton’s exponent of 3.0 and EDM models is less accurate at this depth interval when compared to mud weight (see Fig. 5) as a proxy to formation pressure (which is usually 500 psi lesser in reality).

## Conclusions

The Eaton exponent can be raised in places where disequilibrium compaction is not the only overpressure generating mechanism as indicated by Bowers (2001). For example, Tingay et al. (2009) used exponent of 6.5 in vertically transferred overpressures in Brunei. In central swamp (Middle Miocene) Onshore Niger Delta, Nwozor et al. (2012) used exponent of 6.5, while Chukwuma et al. (2013) raised the exponent to 5 or 6 using data set from Oligocene to Lower Miocene depobelt. In Northern Delta (older) depobelt, Eaton’s exponent ranges of 4.8–5 could be adapted with care for the study area. Otherwise, it would lead to inaccurate estimate of shale pressures at the deeper settings (deeper than 10,000 ft TVDml), especially within the deep shale intervals where secondary mechanism is active and shale temperature is hottest. This is a reflection of different compaction states of the rocks, hence the variation in rock property behaviours which is a function of age, predominant lithology and regional tectonics. The forgoing results show that there is no clear pattern of the distribution of Eaton’s exponent in the study area especially within the hot and deeper settings. Thus, fiddling with the exponent without appropriate geological consideration will lead to pitfalls and partial success of pressure estimates.

## Notes

### Acknowledgements

The authors are grateful to Shell GeoSolutions University Liaison Unit and Shell Center of Excellence in Geosciences and Petroleum Engineering in University of Benin, for the R&D opportunity and noteworthy supports.

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